US20080140479A1 - Methods and apparatus to monitor consumer behavior associated with location-based web services - Google Patents
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Definitions
- the present disclosure relates generally to media monitoring and, more particularly, to methods and apparatus to monitor consumer behavior associated with location-based web services.
- Advertisers, retail establishments, product manufacturers, service providers, and other types of businesses are often interested in the behaviors of consumers related to their exposure to advertising and/or other informational media to better market their products or services.
- Business often use advertising or other information or promotional material to draw attention and interest to their products or services.
- Web-based technology also offers businesses the ability to make information about their products or services available on the Internet. People wishing to learn more about particular products or services can retrieve information via the Internet using, for example, search engines, or other Internet-enabled query-based applications.
- a traditional technique for determining the effectiveness of an advertising campaign involves monitoring the sales quantities of the advertised product or service before and/or during the implementation of the advertising campaign.
- Another traditional technique for determining the effectiveness of an advertising campaign involves selecting a panel of consumers to observe various advertisements within a controlled environment and subsequently asking the consumers whether the advertisements would have influenced them to make purchases.
- FIG. 1 illustrates an example system for collecting location data and providing web services to a monitored individual to monitor consumer behavior and measure effectiveness of advertising media and other information related to products, services, and/or retail establishments.
- FIG. 2 is a block diagram of an example personal portable meter (PPM) device of FIG. 1 .
- PPM personal portable meter
- FIG. 3 is a more detailed block diagram of a portion of the example PPM of FIGS. 1 and 2 .
- FIG. 4 is a block diagram of an example data analysis apparatus that may be used to analyze data collected by the example PPM of FIGS. 1-3 .
- FIGS. 5A and 5B depict a flow diagram representative of example machine readable instructions that may be executed to collect data using the example PPM of FIGS. 1-3 .
- FIG. 6 is a flow diagram representative of example machine readable instructions that may be executed to analyze data collected by the example PPM of FIGS. 1-3 .
- FIG. 7 is a flow diagram representative of example machine readable instructions that may be executed to determine advertisements to which monitored persons were exposed based on data collected by the PPM of FIGS. 1-3 .
- FIG. 8 is a flow diagram representative of example machine readable instructions that may be executed to correlate advertisement exposure and/or visitations to retail establishments with events related to queries submitted by a monitored person via the PPM of FIGS. 1-3 .
- FIG. 9 is a flow diagram representative of example machine readable instructions that may be executed to implement a location data validation process to determine the validity of location data collected by the PPM of FIGS. 1-3 .
- FIG. 10A is a flow diagram representative of example machine readable instructions that may be executed to generate and store heartbeat information that may subsequently be used to determine the validity of data collected by the PPM of FIGS. 1-3 .
- FIG. 10B is a flow diagram representative of example machine readable instructions that may be executed to determine the validity of data collected by the PPM based on the heartbeat information generated using the example process of FIG. 10A .
- FIG. 11A is a flow diagram representative of example machine readable instructions that may be executed to generate and store sequential event counts in connection with respective data collected by the PPM of FIGS. 1-3 and that can subsequently be used to determine the validity of the collected data.
- FIG. 11B is a flow diagram representative of example machine readable instructions that may be executed to determine the validity of the data collected by the PPM of FIGS. 1-3 based on the event counts generated using the example process of FIG. 11A .
- FIG. 12 is a flow diagram representative of example machine readable instructions that may be executed to determine the validity of location data collected by the PPM of FIGS. 1-3 .
- FIG. 13 is a flow diagram representative of example machine readable instructions that may be executed to determine whether there is sufficient movement to indicate that the PPM of FIGS. 1-3 was moved from one location to another.
- FIG. 14 is a flow diagram representative of example machine readable instructions that may be executed to detect missing location event entries in location data collected by the PPM of FIGS. 1-3 .
- FIG. 15 is a flow diagram representative of example machine readable instructions that may be executed to answer database requests from advertisers or business users related to behaviors of monitored persons associated with advertisements and query search results.
- FIG. 16 is a flow diagram representative of example machine readable instructions that may be executed to determine the advertisements to which monitored persons were exposed based on data collected by the PPM of FIGS. 1-3 .
- FIG. 17 is a block diagram of an example processor system that may be used to implement portions of the system of FIG. 1 .
- FIG. 1 for purposes of discussion the example methods and apparatus are described herein with respect to an example geographic area 10 including indoor and outdoor regions. However, the example methods and apparatus described herein may be used in any area or environment.
- Location information may include, for example, geographic area coordinates, global position coordinates, local area position coordinates, relative position coordinates, or any other type of location indication information that, when analyzed, may be used to determine the location of a person (e.g., a monitored individual) and/or the movements of a person from one location to another.
- Location information may also include distances between a person and a media source, such as, for example, a billboard, a print display (e.g., a poster), a video presentation device, an audio presentation device, etc.
- location information may be collected, obtained, generated, etc. using any suitable location detection device(s), location detection system(s), and/or location detection technique(s).
- the location detection devices described below may be worn or otherwise carried by a person or monitored person and/or may be part of the PPM.
- Media monitoring information may include any information associated with media that is exposed to and/or consumed (e.g., viewed, listened to, interacted with, etc.) by a monitored person.
- Media presentations may include, for example, a television program, a radio program, movies, songs, advertisements, Internet information, and/or any other video information, audio information, still image information, and/or computer information to which a person may be exposed.
- Media monitoring information may be generated based on, for example, audio codes, signatures (e.g., a representation of any characteristic of monitored audio such as, for example, a characteristic of a program signal), radio frequency (RF) codes, and/or any other codes, information, or identifiers that may be extracted from and/or otherwise associated with a media presentation to which a monitored person is exposed.
- audio codes signatures (e.g., a representation of any characteristic of monitored audio such as, for example, a characteristic of a program signal), radio frequency (RF) codes, and/or any other codes, information, or identifiers that may be extracted from and/or otherwise associated with a media presentation to which a monitored person is exposed.
- RF radio frequency
- media monitoring information may be collected, generated, obtained, etc. using any suitable media consumption detection device and/or any suitable media consumption detection technique.
- the example geographic area 10 in which the example methods and apparatus described herein may be implemented, includes an example business 12 , which may sell products and/or services.
- the example geographic area 10 also includes various media that may be used to present advertisements or other information (e.g., product/services information, entertainment audio/video, etc.).
- the example geographic area 10 includes a billboard 14 , an audio device 16 , which may play or present audio advertising, and a video device 18 , which may present video advertising.
- the audio device 16 may be implemented using a stationary audio device or system (e.g., a stationary stereo, a stationary audio playback device, a kiosk, etc.) configured to present audio advertisements and/or other types of audio information
- the video device 18 may be implemented using a stationary video device or system (e.g., a stationary television, a stationary video monitor, a kiosk, etc.) to present video advertisements and/or other types of video information.
- the media 14 , 16 , and 18 are used to present advertisements or product/services information external to the PPM's 30 , 34 , and 36 at fixed geographic locations so that any person that moves or walks within proximity of the media 14 , 16 , and 18 may be exposed to the advertisements or information.
- a billboard 20 is provided with a radio frequency (RF) transmitter/receiver 22 to detect a PPM and/or be detected by a PPM.
- the RF transmitter 22 may be configured to emit location information indicative of the location of the billboard 20 and/or an advertisement identifier indicative of an advertisement presented by the billboard 20 .
- the RF transmitter/receiver 22 can be configured to receive location and/or identification information from a PPM.
- RF transceivers substantially similar or identical to the RF transmitter/receiver 22 may be provided to other media (e.g., the billboard 14 , the audio device 16 , and the video device 18 ).
- the example geographic area 10 of FIG. 1 also includes an example PPM 30 worn and/or carried by a monitored person 32 .
- Additional example PPM's 34 and 36 are carried by other monitored persons 38 and 40 in the geographic area 10 to increase the amount of data collected such as, for example, data associated with actions (e.g., queries, retail establishment visitations, purchases, etc.) of users (e.g., the persons 32 , 38 , and 40 ) related to exposure to media (e.g., the media 14 , 16 , 18 , and 20 ).
- the accuracy of the analyses described herein may be increased by increasing the quantity of participating monitored persons assigned to PPM's.
- participating monitored persons may be selected based on advertising and/or business objectives such as, for example, a desire to meter people within a particular demographic group or target market group.
- the example PPM 30 may operate inside and/or outside structures such as the business 12 , and may employ one or more communication techniques and/or communication systems including, but not limited to, systems to communicate with a location system such as an RF transceiver tower 42 and/or a positioning satellite 44 .
- the example PPM 30 includes a location-based web service application that allows a monitored person (e.g., the monitored person 32 ) to obtain web-based information associated with their location.
- the PPM 30 receives web-based data from a web server 50 via a network 52 , which in this example is the Internet.
- the web server 50 is coupled to a location database 54 and an application server 56 , which enables the web server 50 to return locality specific information from the location database 54 to inquiries or queries made to the location-based web service application by the monitored person 32 .
- the PPM 30 is communicatively coupled to a central facility 60 via a network 62 to allow data transfer from the PPM 30 .
- the network 62 may be implemented using any suitable communication interface including, for example, a telephone system, a cable system, a satellite system, a cellular communication system, AC power lines, a network, the Internet, etc.
- the central facility 60 of the illustrated example is communicatively coupled to other monitored sites such as the billboard 20 and/or broadcast sites that transmit programming and/or advertising to the audio device 16 and/or the video device 18 .
- the central facility 60 may obtain media exposure data, consumption data, media monitoring data, location data, motion data, and/or any other monitoring data that are collected by the media monitoring devices such as, for example, the PPM 30 .
- the PPM 30 may transmit data to a local relay device 64 which, in turn, transmits data to the central facility 60 to extend the range of the examined or monitored geographic area.
- the example system 10 may be provided with multiple local relay devices 64 that serve as access points for the PPM 30 and other devices to the network 62 and the central facility 60 .
- the central facility 60 includes a server 70 (i.e., a central processor system) and a database 72 .
- the server 70 may be implemented using, for example, a processor system similar or identical to the example processor system 1712 depicted in FIG. 17 that is configured to store data collected from the PPM's in the database 72 and/or to analyze the collected data.
- the database 72 may be implemented using any suitable memory and/or data storage apparatus and technique(s).
- the database 72 of the illustrated example includes a PPM location file 80 , which stores data relating to locations tracked by the PPM's such as the PPM 30 , a media location file 82 , and a web event use file 84 .
- the media location file 82 stores the geographic location of each media presentation device or structure such as the billboards 16 and 20 , the audio device 16 and the video device 18 in association with identifiers corresponding to those media presentation devices or structures.
- the web event use file 84 records all uses by the monitored persons 32 , 38 , and 40 of the location-based web service applications on the PPM's 30 , 34 , and 36 .
- the central facility 60 of the illustrated example also includes an analysis server 74 (e.g., an analyzer).
- the analysis server 74 allows an interested party such as a media monitoring entity or business to analyze collected data stored in the database 72 .
- the analysis server 74 is configured to perform analysis such as correlations (e.g., identifying relationships or associations) between monitored persons, locations, advertisements, inquiries made via location-based information applications, retail establishments visited by the monitored persons, and/or purchases of the monitored persons.
- correlations e.g., identifying relationships or associations
- Location information and/or motion information may be continuously collected in indoor environments and/or outdoor environments via, for example, the example PPM 30 that may be carried or worn by a monitored person (e.g., the monitored person 32 ) as shown in FIG. 1 .
- the example PPM 30 discussed in further detail in connection with FIG. 2 , may be implemented as a standalone device and/or integrated or jointly configured with another communication device such as, for example, a mobile telephone (e.g., a cordless telephone or a cellular-type telephone), a portable audio device (e.g., an IPOD® by Apple Computer, Inc.), a portable digital communicator, and/or a personal digital assistant (PDA).
- a mobile telephone e.g., a cordless telephone or a cellular-type telephone
- a portable audio device e.g., an IPOD® by Apple Computer, Inc.
- PDA personal digital assistant
- FIG. 2 is a detailed block diagram of an example implementation of the PPM 30 of FIG. 1 .
- the PPM 30 may be used to monitor the use of a location-based web service application by a monitored person (e.g., the monitored person 32 of FIG. 1 ). It may also be used to collect location information and/or motion information associated with the use of the location-based web application.
- the PPM 30 includes electronic components configured to detect and/or collect media monitoring information, location information, and/or motion information, and to communicate the information to the central facility 60 of FIG. 1 for subsequent analyses. As shown in FIG.
- the PPM 30 includes a processor 100 , a voice coder/decoder (CODEC) 102 , a memory 104 , a communication interface 106 , a plurality of media monitoring sensors 108 , a plurality of location and motion sensors 110 , an input interface 114 , a visual interface 116 and a timer/counter 118 , all of which are communicatively coupled as shown.
- a processor 100 a processor 100 , a voice coder/decoder (CODEC) 102 , a memory 104 , a communication interface 106 , a plurality of media monitoring sensors 108 , a plurality of location and motion sensors 110 , an input interface 114 , a visual interface 116 and a timer/counter 118 , all of which are communicatively coupled as shown.
- CDEC voice coder/decoder
- the processor 100 may be any processor suitable for controlling the PPM 30 .
- the processor 100 of the illustrated example is responsible for managing and/or processing a location-based web service application and/or collecting, monitoring data related to detected media exposure, media consumption, media presentations, meter location, and/or meter motion.
- the processor 100 may be implemented using a general purpose processor, a digital signal processor, or any combination thereof.
- the processor 100 may be configured to perform and control one or more operations and/or features of the PPM 30 such as, for example, setting the PPM 30 in different operating modes, controlling a sampling frequency for collecting media monitoring information, compressing collected information (e.g., collected tuning information, collected location information, and/or collected motion information), managing communication operations with other processor systems (e.g., the central facility 60 of FIG. 1 ), selecting location information systems (e.g., the RF transceiver tower 42 , the positioning satellite 44 , and/or the relay devices 64 ), and executing location-based web service applications.
- the memory 104 may be used to store collected media monitoring information, program instructions (e.g., software, firmware, etc.), program data (e.g., location information, motion information, etc.), and/or any other data or information required to operate the PPM 30 and/or to implement the example methods and apparatus described herein.
- program instructions e.g., software, firmware, etc.
- program data e.g., location information, motion information, etc.
- the processor 100 may timestamp the acquired information and store the timestamped information in the memory 104 .
- the processor 100 may also store information indicative of use of a location-based web service application, timestamp the acquired information, and store the timestamped information in the memory 104 .
- the memory 104 may be implemented using any suitable volatile and/or non-volatile memory such as, for example, a random access memory (RAM), a read-only memory (ROM), a flash memory device, a hard drive, an optical storage medium, etc.
- RAM random access memory
- ROM read-only memory
- flash memory device a hard drive
- optical storage medium etc.
- the memory 104 may be any removable or non-removable storage medium.
- the communication interface 106 may be used to communicate information between the PPM 30 and other systems including, for example, the central facility 60 , and/or the web location server 50 of FIG. 1 .
- the communication interface 106 may be implemented using any type of suitable wired or wireless transmitter, receiver, or transceiver such as, for example, a Bluetooth® compliant transceiver, an IEEE 802.11 (i.e., Wi-Fi®) compliant transceiver, a cellular communications transceiver, an optical communications transceiver, a network port, a universal serial bus (USB) port, etc.
- the media monitoring sensors 108 of the illustrated example include an audio sensor 130 , an optical transceiver 132 , an RF transceiver 134 , and a bar code reader 136 .
- the example PPM 30 via the audio sensor 130 , the optical sensor 132 , the RF transceiver 134 and/or the bar code reader 136 may be configured to observe or monitor the environment in which the monitored person 32 is located to detect advertisements, products, media presentations, and/or signals associated with the advertisements, the products, and/or the media presentations.
- the example PPM 30 logs or stores a representation (e.g., a signature, a code, etc.) of the detected advertisement, product, or media presentation and/or an identifier (e.g., a code) thereof in the memory 104 , along with a timestamp indicative of the time at which the information was detected.
- a representation e.g., a signature, a code, etc.
- an identifier e.g., a code
- the audio sensor or transducer 130 may be, for example, a condenser microphone, a piezoelectric microphone or any other suitable transducer capable of converting audio information into electrical information.
- the optical transceiver 132 may be, for example, a transmitter and receiver combination including a light sensor (e.g., a light sensitive diode, an IR sensor, a complimentary metal oxide semiconductor (CMOS) sensor array, a charge-coupled diode (CCD) sensor array, etc.) and a light emitter (e.g., a light emitting diode (LED), etc.).
- a light sensor e.g., a light sensitive diode, an IR sensor, a complimentary metal oxide semiconductor (CMOS) sensor array, a charge-coupled diode (CCD) sensor array, etc.
- a light emitter e.g., a light emitting diode (LED), etc.
- the RF transceiver 134 may be, for example, a Bluetooth® compliant transceiver, an IEEE 802.11 compliant transceiver, an ultrawideband RF receiver, and/or any other RF receiver and/or transceiver that detects signals from an example RF transceiver such as the RF transceiver 22 of the billboard 20 of FIG. 1 . While the example PPM 30 of FIG. 1 includes the audio sensor 130 , the optical transceiver 132 , the RF transceiver 134 , and the bar code reader 136 , the example PPM 30 need not include all of the sensors 130 , 132 , 134 , and 136 .
- the audio sensor 130 may be sufficient to detect audio and/or video information (e.g. audio and/or video advertisements) to generate and/or collect identification characteristics and/or identifiers, such as signatures and/or, if they are present, audio measurement codes which may be inserted for the purpose of audience measurement.
- the optical transceiver 132 may be sufficient to detect still picture and/or video information to generate and/or collect identification characteristics, such as signatures and/or, if present, video codes.
- the example PPM 30 may be provided with the audio sensor 130 and the optical transceiver 132 .
- the processor 100 of the illustrated example is communicatively coupled to the location and motion sensors 110 .
- the location and motion sensors 110 may include an ultrasonic transceiver 142 , a motion sensor 144 , a satellite positioning system (SPS) receiver 146 , an RF location interface 148 , and/or a compass 150 .
- the audio sensor 130 may also be configured to function as a location sensor by receiving ultrasonic signals from an ultrasonic source, such as an ultrasonic transmitter on the relay devices 64 , on other portable units, and/or on other stationary units located throughout one or more areas.
- location and motion sensors 110 may be configured to receive location-related information (e.g., encoded information, pluralities of fragmented information, etc.) and to perform any processing necessary to convert the received information to location information that indicates the location of the PPM 30 .
- location-related information e.g., encoded information, pluralities of fragmented information, etc.
- the PPM 330 may generate location information using triangulation techniques by receiving RF signals from three or more RF transmitters (e.g., three or more of the relay devices 64 or the RF transceiver tower 42 of FIG. 1 ), and triangulating or processing the combination of RF signals.
- location and motion sensors 110 may be configured to process received location-related signals to generate location information, and others of the location and motion sensors 110 may be configured to communicate the location-related signals to the processor 100 , and the processor 100 may be configured to process the received location-related signals using, for example, software and/or hardware processes to generate location information. In some example implementations, the location and motion sensors 110 may process the received information in combination with the processor 100 to generate the location information.
- the ultrasonic transducer 142 may be used to enable the PPM 30 and/or the relay devices 64 to determine a location of the PPM 30 .
- the ultrasonic transducer 142 may be configured to work in combination with the RF location interface 148 , the RF transceiver 134 , and/or the optical transceiver 132 to determine a distance between the PPM 30 and a particular stationary unit such as the transceiver tower 42 .
- the PPM 30 may transmit an ultrasonic chirp and RF signal simultaneously.
- the signals reach the same transceiver tower 42 at different times (i.e., the RF chirp arrives before the ultrasonic chirp).
- the distance between the PPM 30 and the transceiver tower 42 may be calculated based on the distinct times of arrival, as described in further detail below.
- the motion sensor 144 may be used to detect relatively small body movements of a monitored person (e.g., the monitored person 32 ). The motion sensor 144 may also generate motion information related to the body movements, and communicate the motion information to the processor 100 .
- the motion sensor 144 may be implemented using any suitable motion detection device such as, for example, a mercury switch, a trembler, a piezo-gyroscope integrated circuit (IC), an accelerometer IC, etc.
- the SPS receiver (SPSR) 146 may be implemented using, for example, a GPS receiver and may be configured to generate location information based on encoded GPS signals received from GPS satellites such as the positioning satellite 44 in FIG. 1 . In general, the SPS receiver 146 may be used by the PPM 30 to collect location information in outdoor environments.
- the GPS data can be stored as latitude and longitudinal coordinates.
- the RF location interface 148 may be implemented using a receiver and/or a transceiver and may be used to receive location-related signals and/or information from a location information system such as, for example, the RF transceiver tower 42 and/or the relay devices 64 .
- the RF location interface 148 may use transmission towers such as the RF transceiver towers 42 to determine the location of the PPM 30 using a method such as, for example, angle of arrival (AOA), time difference of arrival (TDOA), and/or enhanced observed time difference of arrival (EOTD).
- AOA angle of arrival
- TDOA time difference of arrival
- EOTD enhanced observed time difference of arrival
- methods including, for example, advanced forward link trilateration (AFLT) or Enhanced Forward Link Trilateration (EFLT) may be used to determine the locations of the PPM 30 .
- AFLT advanced forward link trilateration
- EFLT Enhanced Forward Link Trilateration
- the RF location interface 148 may also be configured to broadcast location-related information such as, for example, time-stamped PPM identification codes.
- the time-stamped PPM identification codes may be received by, for example, three or more of the relay devices such as the relay device 64 , which may process the codes cooperatively using triangulation techniques to determine the location of the PPM 30 .
- the relay devices 64 may communicate the received time-stamped PPM identification codes to the central facility 60 along with information relating to the times at which the codes were received by each of the relay devices 64 .
- the central facility 60 may then determine the location of the PPM 30 based on this information.
- the RF location interface 148 may be implemented using any suitable RF communication device such as, for example, a cellular communication transceiver, a Bluetooth® transceiver, an 802.11 transceiver, an ultra-wideband RF transceiver, etc.
- the RF location interface 148 may be implemented using only an RF receiver or only an RF transmitter. Examples of known location-based technologies that may be implemented in connection with the RF location interface 228 include an Ekahau Positioning EngineTM by Ekahau, Inc. of Saratoga, Calif. and an ultrawideband positioning system by Ubisense, Ltd. of Cambridge, United Kingdom.
- Another example technique that may be used to determine the location of the PPM 30 using the ultrasonic sensor 142 and the RF location interface 148 in FIG. 2 involves communications between the relay device 64 and the PPM 30 .
- the relay device 64 is separated by a distance “x” from the PPM 30 .
- the relay device 64 initiates a location determination process (distance determination) by emitting a chirp, which includes a simultaneous radio frequency (RF) chirp with an ultrasonic chirp.
- the relay device 64 may transmit the RF chirp with an RF location transceiver and transmit the ultrasonic chirp with an ultrasonic transducer.
- the RF chirp transmitted by the relay device 64 may further include an embedded relay device identifier associated with the relay device 64 .
- RF signals propagate at 186,282 miles per second, whereas the speed of sound propagates at a substantially slower speed of about 0.2057 miles per second.
- the PPM 30 receives the RF chirp first and initiates the timer/counter 218 . Accordingly, the PPM 30 is “armed” and waiting to detect the ultrasonic chirp via the ultrasonic sensor 142 .
- the PPM 30 stops the timer/counter 218 and calculates the distance between the relay device 64 and the PPM 30 as a function of the elapsed time and the known propagation rate of sound. Audio sampling rates of computers, PDA's, and other audio hardware typically exceeds 8000 samples per second. Such a sample rate yields a resolution of 0.125 milliseconds per sample, which is sufficient for purposes of monitored person distance determination.
- the relay device 64 and PPM 30 may, additionally or alternatively, repeat the distance determination process any number of times to verify an accurate measurement. For example, five iterations of the distance determination process may be performed in which the PPM 30 calculates an average distance from the five samples. The average distance value is then transmitted to the relay unit 64 via an encoded RF signal. Still further, the PPM 30 may send the raw elapsed time data back to the relay device 64 rather than perform such calculations on the processor 100 . Processing the raw data at the relay device 64 rather than at the PPM 30 allows the PPM 30 to consume less power for calculations and/or reduce the size requirements of the memory 104 . The relay device 64 can then communicate the determined location information to the PPM 30 .
- adjustments to the calculation may be implemented to accommodate for variations in air temperature, ambient pressure, and/or atmospheric density.
- Such calculations are stored in the memory 104 of the PPM 30 and executed by the processor 100 to yield the distance “x.”
- the PPM 30 can then generate location information based on the calculated distance and store the location information in the memory 104 for later communication to the central facility 60 .
- the compass 150 may be implemented using a magnetic field sensor, an electronic compass integrated circuit (IC), and/or any other suitable electronic circuit.
- the compass 150 may be used to generate direction information, which may be useful in determining the direction in which a monitored person (e.g., the monitored person 32 ) is facing.
- the direction information may also be used to determine if a person is facing, for example, the billboard 20 so that when the PPM 30 receives an RF identification signal from the transceiver 22 , corresponding to the billboard 20 in FIG.
- the direction information from the compass 150 may be used to determine if the monitored person 32 is facing the billboard 20 and, thus, is exposed to the media. In this manner, the content of the billboard 20 may be credited appropriately for being viewed by or exposed to a monitored person.
- An example positioning technology that may be used in combination with the compass 150 , the motion sensor 144 , and the SPS receiver 146 is the Dead-Reckoning Module (DRM®) produced and sold by Point Research Corporation of Santa Ana, Calif.
- the DRM® is configured to enable generation and/or collection of location information within buildings (e.g., a household, the business 12 ) and in outdoor environments. In general, when used outdoors, the DRM® may be configured to enable the SPSR 146 to use GPS technology to collect and/or generate location information. When used indoors, the DRM® uses, among other components, a compass (e.g., the compass 150 ) and an accelerometer (e.g., the motion sensor 144 ) to generate location information.
- a compass e.g., the compass 150
- an accelerometer e.g., the motion sensor 144
- the PPM 30 may further include the visual interface 116 , which may be used in combination with the input interface 114 to enter and retrieve information from the PPM 30 .
- the visual interface 116 may be implemented using a liquid crystal display (LCD) that, for example, displays detailed status information, location information, configuration information, calibration information, etc.
- the visual interface 116 may display an interface for the local web-based information application and allow the monitored person to view search results from queries submitted via the application.
- the timer/counter 118 may be used to generate timer events that are communicated to the processor 100 . Timer events may be used to, for example, wake-up the PPM 30 from a shut-down state, powered-down state, a power-saving mode state, etc.
- the timer/counter 118 may be configured to generate a timing event after a particular amount of time has elapsed or at a particular time of day. The amount of time or time of day may be set by, for example, configuring registers in the timer/counter 118 .
- the timer/counter 118 may include a real-time clock or other time-tracking mechanism to generate timestamps that can be stored in association with location tracking data and query events indicative of queries submitted by users via the location-based web service application as discussed below.
- the PPM 30 may be integrated with other functions such as a wireless phone that uses the voice coder/decoder 102 to code and decode voice signals and the RF transceiver 134 to send the voice signals over a wireless network for phone calls.
- the processor 100 may run an Internet browser or other applications for use by the monitored person using the input interface 114 and the visual interface 116 .
- the components in FIG. 2 may be hardware, software and/or firmware and could, for example, be loaded or otherwise integrated into existing PDA's or wireless phones with existing components to perform the above-described functions.
- the media monitoring information collected by the PPM's in the geographic area 10 may be processed by the central facility 60 at a later time.
- the central facility 60 stores location data from the PPM's, as well as usage data from the location-based web application on the PPM 30 .
- the central facility 60 may also monitor and store broadcast information, such as audio codes/signatures from radio and/or television programs.
- the PPM 30 may be configured to substantially continuously generate, obtain, and/or collect media monitoring information, location information, and motion information.
- the PPM 30 may include one or more media monitoring sensors 108 used to detect media and to generate or collect media monitoring information or media-related data based on, for example, audio signals, visual signals, RF signals, infrared (IR) signals, ultrasonic signals, etc.
- the PPM 30 may include one or more location or positioning devices that enable the PPM 30 to collect location or position information from one or more location and motions sensors 110 and corresponding systems, and/or to send the collected location information to one or more location information systems.
- the example geographic area 10 includes one or more location information systems that may be used to communicate/receive location information to/from the PPM 30 .
- the PPM 30 may collect/generate and store media monitoring information (e.g., audience measurement codes (e.g., codes inserted to identify media, sometimes referred to as “ancillary codes”), signatures, etc.) associated with any media (e.g., video, audio, movies, music, still pictures, advertising, etc.) to which the monitored person 32 is exposed.
- media monitoring information e.g., audience measurement codes (e.g., codes inserted to identify media, sometimes referred to as “ancillary codes”), signatures, etc.) associated with any media (e.g., video, audio, movies, music, still pictures, advertising, etc.) to which the monitored person 32 is exposed.
- the PPM 30 may be configured to obtain codes (e.g., audio codes), generate or collect signatures, etc. that may be used to identify video programs (e.g., DVD movies, television programming, etc.), audio programs (e.g., CD audio, radio programming, etc.), and/or any other media.
- the PPM 30 may collect
- the PPM 30 may be configured to receive codes (e.g., audio codes and/or RF codes) associated with other forms of media such as, for example, billboards or any other form of publicly viewable advertising or media.
- each billboard e.g., the billboard 20
- each billboard may include an audio broadcasting device and/or an RF broadcasting device such as, for example, the transceiver 22 of FIG. 1 , configured to emit a billboard code that uniquely identifies that billboard.
- the PPM 30 may obtain the billboard code as media monitoring information, thereby indicating that the monitored person 32 was exposed to the billboard.
- the PPM 30 may be configured to obtain direction information via, for example, the compass 150 , and log the direction in which the monitored person 32 is facing or traveling so that subsequent data analyses may determine if the monitored person 32 was likely facing the billboard.
- the RF transceiver tower 42 may be used in combination with any RF communication technology such as, for example, a cellular or mobile communication technology (e.g., GSM, CDMA, TDMA, AMPS, etc.).
- the RF transceiver tower 42 may be configured to transmit or broadcast position information and/or any type of signal that may be used by the PPM 30 to generate location information.
- the RF transceiver tower 42 may transmit information having geographic location information and time codes. More specifically, the RF transceiver tower 42 may be associated with a particular or unique set of geographic location coordinates (i.e., geographic location information), that define or indicate the location of the RF transceiver tower 42 within a global positioning grid.
- the time codes may be associated with a time at which a particular signal is transmitted by the RF transceiver tower 42 .
- the geographic location information and the time codes received from a plurality of RF transceiver towers may be used by the PPM 30 to perform triangulation processes to determine the location(s) of the PPM 30 .
- the RF transceiver tower 42 is depicted as being located in an outdoor environment, the PPM 30 may include location technologies that communicate with the RF transceiver tower 42 when the PPM 30 is located within indoor environments (e.g., within the business 12 ) and/or outdoor environments.
- the positioning satellite 44 may also be used to communicate location information to the PPM 30 .
- the positioning satellite 44 may be used to implement any satellite positioning system (SPS) such as, for example, the global positioning system (GPS) that continuously broadcasts position-related information.
- SPS satellite positioning system
- GPS global positioning system
- the PPM 30 may receive the position-related information from the satellite 44 to determine movement information associated with the location(s) of the PPM 30 .
- FIG. 3 is a block diagram of an example apparatus 160 to implement the location data collection and web event data collection of the example PPM 30 of FIGS. 1 and 2 .
- the apparatus 160 may be implemented using, for example, logic and/or other circuitry in communication or integral with the media monitoring sensors 108 and location and motion sensors 110 described above in connection with FIG. 2 , and/or may be implemented using software and/or firmware executed by the processor 100 of FIG. 2 .
- the apparatus 160 includes a web-based information application controller 162 , a location data collector 164 , a web event data collector 166 , a media capture data collector 168 , and a consumer purchase data collector 170 .
- the web-based information application controller 162 is coupled to the input interface 114 , the visual interface 116 , and the communication interface 106 .
- the web-based application controller 162 and the location data collector 164 are used to implement a location-based web services application.
- a location-based web services application enables a user of the PPM 30 to submit queries requesting information about products, services, retail establishments, etc., and the application communicates the requests along with corresponding location information indicative of the location at which the PPM 30 (and, thus, the monitored person 32 ) was located when the monitored person 32 submitted the query.
- the web-based information application controller 162 presents a search window on the visual interface 116 that allows the monitored person 32 to enter search requests or queries including one or more query criteria (e.g., product search term(s), services search term(s), retail establishment search term(s), etc.) and/or location information such as an address, GPS coordinates, a zip code, area code, etc.
- the web-based information application controller 162 may be used to request information about a product or service including descriptive information or retail establishment names and/or addresses thereof of where the product or service is sold. Additionally, the web-based information application controller 162 may be used to request addresses of particular retail establishments nearest a location of the monitored person 32 .
- search terms or criteria provided by the monitored person may include bar code identification codes or RFID identification codes scanned by the monitored person 32 using the bar code reader 136 or the RF transceiver 134 of FIG. 2 .
- the person 32 may see a product and scan its bar code ID or RFID to request information.
- the web-based information application controller 162 transmits requests or queries via the communication interface 106 to the web server 50 of FIG. 1 .
- the web server 50 returns information responsive to the search request in, for example, a hypertext markup language (html) file and/or an extensible markup language (XML) file to the communication interface 106 .
- the web-based information application controller 162 tailors answers to search requests based on the monitored person's current location. For example, if the monitored person 32 makes a query for restaurants, the web-based information application controller 162 prioritizes results in the immediate geographic area of the monitored person 32 .
- the local web-based information application controller 162 may then display the results via the visual interface 116 . Additionally or alternatively, the web server 50 may filter, arrange, and/or return search results based on the location of the monitored person 32 .
- the location data collector 164 is coupled to the location and motion sensors 110 , the timer/counter 118 , and the memory 104 .
- the memory 104 stores a location data log file 180 .
- the location data collector 164 collects/generates location information and stores an identification code for the PPM 30 and the location information along with corresponding timestamps in the location data log file 180 .
- the web event data collector 166 is coupled to the web-based information application controller 162 and the timer/counter 118 .
- the web event data collector 166 records or tracks the use of the location-based web services application as well as results obtained through searches.
- the web event data collector 166 stores an identification code for the PPM 30 , the web event data, and a corresponding timestamp from the timer/counter 118 in a web event data log file 182 stored in the memory 104 .
- the location data collector 164 retrieves the data stored in the location data log file 180
- the web event data collector 166 retrieves the data stored in the web event data log file 182
- the data collectors 164 and 166 periodically or aperiodically communicate the data via the communication interface 106 to the central facility 60 .
- the media data collector 168 is coupled to the media monitoring sensors 108 , the location and motion sensors 110 , the timer/counter 118 , and the memory 104 .
- the memory 104 stores a media data log file 184 .
- the media data collector 168 can generate a signature and/or extract a code from the detected media signal.
- the media data collector 168 can then store the media code and/or signature in the media data log file 184 .
- the media data collector 168 can be configured to periodically or aperiodically communicate the data in the media data log file 184 via the communication interface 106 to the central facility 60 .
- the consumer purchase data collector 170 is coupled to the location and motion sensors 110 , the timer/counter 118 , and the memory 104 .
- the memory 104 stores a purchase data log file 186 .
- the RF transceiver 134 and/or the bar code reader 136 can be configured to read product identifiers, service identifiers, and/or retail establishment identifier(s) and communicate the identifier(s) to the consumer purchase data collector 170 .
- the consumer purchase data collector 170 can then store the identifier(s) in the purchase data log file 186 in association with corresponding timestamp(s) indicative of when purchase(s) were made and corresponding location information indicative of the location(s) at which the purchase(s) were made.
- FIG. 4 is a block diagram of an example apparatus 200 that may be used to collect location and media data (e.g., advertising data) from the PPM 30 , other data devices, and the server 70 of FIG. 1 and analyze the collected data.
- the apparatus 200 may be implemented using, for example, logic and/or other circuitry in communication with or integral to the server 70 , or may be implemented using software and/or firmware executed by the server 70 .
- the apparatus 200 is communicatively coupled to the database 72 and the analysis server 74 described above in connection with FIG. 1 .
- the analysis server 74 may be the same server as the server 70 .
- the example apparatus 200 includes a receiver 202 , a data fault detector 204 , a data file interface 206 , a data analyzer 208 , a geo-coded advertisement database 210 , and a reference media codes/signatures database 211 .
- the receiver 202 is coupled to a communications interface of the server 70 to receive data from log files (e.g., the data log files 180 , 182 , 184 , and 186 of FIG. 3 ) of PPM's (e.g., the PPM 30 ).
- the receiver 202 is configured to perform initial processing on the received data and to make the data available to the data fault detector 204 .
- the data fault detector 204 performs one or more processes described below to determine the validity of the data entries from the data log files 180 , 182 , 184 , and 186 .
- the data file interface 206 creates files and stores/retrieves data in the files to facilitate data analysis by the data analyzer 208 .
- the data analyzer 208 is coupled to the geo-coded advertisement database 210 , which is configured to store advertisement identifiers in association with respective location identifiers.
- the advertisement identifiers are indicative of or identify advertisements placed at geographic locations, and the location identifiers are indicative of the locations at which those advertisements are placed.
- the data analyzer 208 is configured to determine associations or correlations between queries or search requests, advertisements, retail establishments, and purchase data based on respective location information and timestamps.
- the data analyzer 208 may retrieve a location identifier associated with a query from a data file created by the data file interface 206 and also retrieve advertisement and location identifiers from the geo-coded advertisement database 210 associated with advertisements to determine the advertisements to which a user (e.g., the monitored person 32 of FIG. 1 ) was proximately located when the monitored person 32 submitted the query or sometime before the monitored person 32 submitted the query.
- the analyzer 208 can also determine, based on search terms of the query, which advertisements are associated with the query and credit those advertisements as having been exposed to the monitored person 32 and/or credit the advertisements to indicate their effectiveness in influencing the user to request information about the advertised products, services, retail establishments, etc.
- the analyzer 208 can analyze path of travel information associated with the monitored person 32 based on received location information to determine whether the monitored person 32 visited any retail establishments, and to credit certain advertisements and/or query/search results as having effectively influenced the monitored person 32 to visit such retail establishments related to those advertisements and/or query/search results.
- an advertisement and/or a query/search result is deemed to be related to a visited retail establishment if the advertisement or query/search result advertises or provides information about the retail establishment or a product offered by the retail establishment and, in some instances, if the advertised establishment was subsequently visited.
- the data analyzer 208 can analyze received purchase data indicative of purchases within a particular time frame of a user-submitted query or search request. If the data analyzer 208 determines that a particular purchase is related to an exposure to an advertisement or a query/search result, the data analyzer 208 credits the advertisement and/or the query/search result as having effectively influenced the monitored person 32 to make the purchase.
- the reference media codes/signatures database 211 is configured to store advertisement identifiers in association with respective media representation information such as codes or signatures that are known to be associated with, correspond to, or that otherwise identify those advertisements.
- the reference media codes/signatures database 211 can store reference audio codes or signatures that identify respective audio advertisements, reference video codes, or signatures that identify respective video advertisements, and/or RF codes or signatures that identify respective advertisements (e.g., the billboard 20 of FIG. 1 ) having RF transmitters (e.g., the RF transmitter 22 of FIG. 1 ) that emit codes or unique RF signals.
- the data analyzer 208 can compare codes or signatures collected by the PPM's 30 , 34 , and 36 ( FIG.
- the data analyzer 208 can use the advertisement identifier information in the reference media codes/signatures database 211 in connection with the geo-coded advertisement database 210 to determine the locations at which the advertisements were presented.
- the data analyzer 208 can retrieve information from the database 72 to perform analyses and can store analysis results in the database 72 for subsequent retrieval by a metering entity or a business interested in receiving the analysis results.
- the database 72 includes a storefront and product geo-coded knowledgebase 212 and a consumer behavior knowledgebase 214 .
- the storefront and product geo-coded knowledgebase 212 stores retail establishment identifiers and product/service identifiers in association with respective location identifiers indicative of the locations of those retail establishments and products/services.
- the data analyzer 208 can retrieve the associated identifiers from the storefront and product geo-coded knowledgebase 212 to determine whether a user visited a particular retail establishment and/or purchased a product or service at a particular retail establishment.
- the storefront and product geo-coded knowledgebase 212 can be setup and configured by a metering entity (e.g., a metering business implementing the example methods and apparatus described herein) upon initial system setup to associate location identifiers with respective retail establishments and/or products/services.
- the knowledgebase 212 is maintained thereafter to keep location identifier associations up to date.
- the storefront and product geo-coded knowledgebase 212 is updated based on data collected by the PPM 30 . For example, purchase data stored by the PPM 30 in association with location information may include a retail establishment name or identifier that the storefront and product geo-coded knowledgebase 212 can use to update location identifier associations and/or add new location identifier associations.
- the data analyzer 208 can store behavior-related analysis results in the consumer behavior knowledgebase 214 to create data representative of persons' behaviors related to advertisements and query results.
- the behavior-related data stored in the consumer behavior knowledgebase 214 can be used to extrapolate buying trends, purchasing psychology, assess how influential certain query search results are on people, etc.
- Product manufacturers, retail establishments, service providers, advertisers or any other interested entity can use the consumer behavior knowledgebase 214 to determine how to better reach their target markets or implement more effective advertising campaigns.
- FIGS. 5A , 5 B, 6 - 9 , 10 A, 10 B, 11 A, 11 B, and 12 - 16 are flow diagrams representative of example processes that may be executed to implement the example methods, apparatus, and systems described herein.
- the example methods of FIGS. 5A , 5 B, 6 - 9 , 10 A, 10 B, 11 A, 11 B, and 12 - 16 may be wholly or partially implemented using machine readable instructions comprising a program for execution by a processor (e.g., the processor 100 of FIG. 2 and/or the processor 1712 of FIG. 17 ).
- the programs may be embodied in software stored on a tangible medium such as a CD-ROM, a floppy disk, a hard drive, a digital versatile disk (DVD), or a memory associated with the processor 100 and/or the processor 1712 and/or embodied in firmware and/or dedicated hardware in a well-known manner.
- a tangible medium such as a CD-ROM, a floppy disk, a hard drive, a digital versatile disk (DVD), or a memory associated with the processor 100 and/or the processor 1712 and/or embodied in firmware and/or dedicated hardware in a well-known manner.
- FIGS. 5A , 5 B, 6 - 9 , 10 A, 10 B, 11 A, 11 B, and 12 - 16 persons of ordinary skill in the art will readily appreciate that many other methods of implementing the example methods, apparatus, and systems described herein may alternatively be used. For example, the order of execution of the blocks may be changed, and/or some of the blocks described may be changed, eliminated, or combined.
- FIGS. 5A and 5B depict a flow diagram of an example process that may be performed by the PPM 30 of FIGS. 1-3 to collect data using the example apparatus 160 of FIG. 3 .
- the example apparatus 160 generates and stores the data log files 180 , 182 , 184 , and 186 of FIG. 3 (block 502 ) in the memory 104 .
- the location data collector 164 ( FIG. 3 ) then determines whether a location identifier (e.g., location coordinates or other location information indicative of a location) has been received (block 504 ) from, for example, the location and motion sensors 110 .
- a location identifier e.g., location coordinates or other location information indicative of a location
- the location data collector 164 stores the location identifier in association with a corresponding timestamp in a log entry or record in the location data log file 180 of FIG. 3 (block 506 ).
- the location data collector 164 may create a timestamp using a time value read from the timer/counter 118 of FIG. 2 .
- the web event data collector 166 determines whether any queries or search requests have been submitted by the monitored person 32 via the location-based web services application (block 508 ). If a query has been submitted (block 508 ), the web event data collector 166 stores the query string search criteria (e.g., the user-provided search terms) in association with the search results of the query (received from the web server 50 and the web information application controller 162 ), a corresponding timestamp, and a corresponding location identifier (block 510 ).
- query string search criteria e.g., the user-provided search terms
- the media capture data collector 168 determines whether a media signal (e.g., an audio signal, a video signal, an RF signal, etc.) has been captured (block 512 ).
- the media signal may be an audio signal associated with an advertisement presented by the audio device 16 or the video device 18 ( FIG. 1 ), a video signal presented by the video device 18 ( FIG. 1 ), or an RF signal emitted by the RF transceiver 22 of the billboard 20 ( FIG. 1 ).
- the media capture data collector 168 determines whether the captured media signal includes a code (block 514 ). If the captured media signal includes a code, the media capture data collector 168 extracts (or creates a copy of) the code (block 516 ). If the captured media signal does not include a code (block 514 ), the media capture data collector 168 generates a signature of the captured media signal (block 518 ). Alternatively, a signature can always be collected regardless of whether a code was collected.
- the media capture data collector 168 After the media capture data collector 168 extracts a code (block 516 ) and/or generates a signature (block 518 ), the media capture data collector 168 stores the media representation information (e.g., the code and/or the signature) (block 520 ) in the media data log file 184 ( FIG. 3 ).
- the media representation information e.g., the code and/or the signature
- the consumer purchase data collector 170 determines whether any input data relating to potential purchases have been received (block 522 ) ( FIG. 5B ).
- the potential purchase data is data indicative of a product or a service such as, for example, bar code information read using the bar code reader 136 ( FIG. 2 ) or RFID information received via the RF transceiver 134 ( FIG. 2 ) in response to the monitored person 32 scanning a product or a service document.
- the consumer purchase data collector 170 determines whether the monitored person 32 purchased the product or service corresponding to the received potential purchase data (block 524 ). For example, the consumer purchase data collector 170 may receive subsequent information or the potential purchase information received at block 522 may have a corresponding purchase confirmation flag indicating that the monitored person 32 purchased the related product or service. If the consumer purchase data collector 170 determines that the monitored person 32 made the purchase (block 524 ), the consumer purchase data collector 170 stores the purchase information (block 526 ) in association with a corresponding timestamp and location identifier in the purchase data log file 186 ( FIG. 3 ).
- the example apparatus 160 determines whether it should communicate the data from the data log files 180 , 182 , 184 and/or 186 to the central facility 60 of FIG. 1 (block 528 ). If the example apparatus 160 determines that it should communicate the data to the central facility 60 , the location data collector 164 , the web event data collector 166 , the media capture data collector 168 , and/or the purchase data collector 170 transmit the data from their respective log files 180 , 182 , 184 , and/or 186 to the central facility 60 (block 530 ).
- the example apparatus 160 After the example apparatus 160 communicates the data to the central facility 60 (block 530 ) or if the example apparatus 160 determines that it should not communicate the data to the central facility 60 (block 528 ), the example apparatus 160 determines whether it should continue to the monitor (block 532 ) for additional received information. If the example apparatus 160 determines that it should continue to monitor (block 532 ), control returns to block 502 ( FIG. 5A ). Otherwise, the process of FIGS. 5A and 5B ends.
- the PPM 30 is configured (e.g., provided with diagnostic software routines or diagnostic hardware) to periodically and/or aperiodically perform hardware and/or software diagnostic routines to ensure that the hardware (e.g., the media monitoring sensors 108 , the location and motion sensors 110 , the timer/counter 118 , the voice codec 102 , the memory 104 , etc. of FIG. 2 ) and/or software of the PPM 30 are operating properly and/or within acceptable tolerances. If resulting diagnostic information indicates that the PPM 30 is not working properly or within acceptable tolerances, the PPM 30 may communicate the results to the central office 60 ( FIG. 1 ), and/or the PPM 30 and/or the central office 60 may inform the monitored person 32 to return the PPM 30 for repair or exchange.
- the hardware e.g., the media monitoring sensors 108 , the location and motion sensors 110 , the timer/counter 118 , the voice codec 102 , the memory 104 , etc. of FIG. 2
- the PPM 30 may communicate
- the PPM 30 may also be configured to calibrate itself.
- the PPM 30 may be configured to calibrate individual and/or all components of the PPM 30 (e.g., perform sensor calibrations on some or all of the media monitoring sensors 108 and/or the location and motion sensors 110 of FIG. 2 ).
- the PPM 30 may perform a calibration routine prior to being given to a monitored person (e.g., the monitored person 32 of FIG. 1 ).
- the PPM 30 may perform the calibration routine in response to any suspect diagnostic information resulting from the periodic diagnostic routines.
- the PPM 30 may communicate a message to the central facility 60 indicating the failure, and/or the PPM 30 and/or the central office 60 may inform the monitored person 32 to return the PPM 30 for repair or exchange.
- FIG. 6 is a flow diagram of an example analysis process that may be performed by the servers 70 and 74 ( FIGS. 1 and 4 ) and/or the example apparatus 200 ( FIG. 4 ) to analyze data collected by the example PPM 30 of FIGS. 1-3 .
- the server 70 establishes communications with the PPM 30 (block 602 ), which may be initiated by the PPM 30 via, for example, an alert message that the server 70 can use to obtain and store the identification of the PPM 30 .
- the alert message may be sent by the PPM 30 at block 530 of FIG. 5B .
- the receiver 202 ( FIG. 4 ) then receives the PPM-collected data from the PPM 30 (block 604 ).
- the PPM-collected data includes data from the location data log file 180 , the web event data log file 182 , the media data log file 184 , and/or the consumer purchase data log file 186 .
- the data fault detector 204 ( FIG. 4 ) then performs a validation analysis of the received data (block 606 ) to determine whether any of the received data is invalid or whether any data is missing.
- Example validation processes that may be used to implement the validation analysis of block 606 are described below in connection with FIGS. 9 , 10 B, 11 B, 12 , 13 , and 14 .
- the data file interface 206 ( FIG. 4 ) then stores indicators or tags or other information in association with the received data to indicate valid data and any faults in the data (block 608 ).
- the data file interface 206 stores the valid data in a valid meter log data structure 610 (e.g., a file, a database, a table, etc.) that is used to subsequently perform an advertisement exposure analysis 612 , a query correlation analysis 614 , and a purchase correlation analysis 616 .
- the valid meter log data structure 610 may be stored in the database 72 of FIGS. 1 and 4 .
- the data analyzer 208 determines whether the valid meter log data structure 610 includes any audio/video/RF media representation information (block 618 ) such as, for example, audio/video/RF codes or signatures collected in connection with blocks 512 , 514 , 516 , 518 , and 520 of FIG. 5A . If the data analyzer 208 determines that the valid log data structure 610 includes one or more audio/video/RF media representation information (block 618 ), the data analyzer 208 analyzes the advertisement exposure based on the audio/video/RF representation information (block 620 ). An example implementation of the advertisement exposure analysis of the audio/video/RF media representation information is described below in connection with the example process of FIG. 7 .
- the data analyzer 208 analyzes the advertisement exposure based on audio/video/RF representation information (block 620 ) or if the data analyzer 208 determined that the valid meter log data structure 610 does not include any audio/video/RF media representation information (block 618 ), the data analyzer 208 analyzes advertisement exposure based on location information (block 622 ) in the valid meter log data structure 610 indicative of the locations at which the PPM 30 , and thus, the monitored person 32 , were located.
- the data analyzer 208 can determine if that location is sufficiently proximate to an advertisement at a fixed or stationary location such that the monitored person 32 would have been exposed to the advertisement so that the monitored person 32 could be influenced by the advertisement to perform some action (e.g., request information, purchase a product/service, visit an advertised retail establishment, etc.) related to the advertisement.
- some action e.g., request information, purchase a product/service, visit an advertised retail establishment, etc.
- the data file interface 206 stores information indicative of advertisements to which the monitored person 32 was exposed in an advertisement exposure data structure 624 (e.g., a file, a database, a table, etc.).
- the data analyzer 208 correlates or associates instances of advertisement exposure indicated in the advertisement exposure data structure 624 and/or visits to retail establishments with query-related information (e.g., user-submitted queries and/or query results) (block 626 ).
- the query-related information includes the user-submitted query information (e.g., query search strings, search terms, search criteria, etc.) and the query results stored by the web event data collector 166 ( FIG. 3 ) at block 510 of FIG. 5A .
- the data analyzer 208 may retrieve the query-related information from the valid meter log data structure 610 .
- the data analyzer 208 may associate an instance of an advertisement exposure and/or a user's visit to a retail establishment with one or more user-submitted queries and the query search results when the queries and the query results are related to or associated with the product or service advertised in the advertisement.
- the data file interface 206 stores flags, indicators, or other information indicating the association between instances of advertisement exposures, queries/query results, and retail establishment visits in an advertisement exposure, queries, and store visits mapping data structure 628 .
- An example process that may be used to implement the query correlation analysis 614 is described below in connection with FIG. 8 .
- the data analyzer 208 determines which of the query results are related to purchases (block 628 ) made by, for example, the monitored person 32 ( FIG. 1 ). For example, the data analyzer 208 may determine that one or more query results are related to one or more purchases if the query results contain information related to or associated with one or more product or service purchases. The data analyzer 208 can then credit each query result identified in block 628 as having influenced one or more purchase decisions (block 630 ) made by, for example, the monitored person 32 . In the illustrated example, the data analyzer 208 can store the information generated at block 630 in the consumer behavior knowledgebase 214 ( FIG. 4 ) to create behavior information indicative of how consumers react to particular information (e.g., query search results) and/or advertisements. The example process of FIG. 6 then ends.
- FIG. 7 depicts a flow diagram of an example process that may be used to implement the advertisement exposure analyses of blocks 620 and 622 of FIG. 6 .
- the location-based advertisement exposure analysis 622 is described first followed by a description of the audio/video/RF-based advertisement exposure analysis 620 .
- the receiver 202 retrieves the PPM-collected location data (block 702 ) from, for example, the valid log meter data structure 610 ( FIG. 6 ).
- the data analyzer 208 then retrieves a location event record (block 704 ) and determines a nearest advertisement geo-fence (block 706 ) based on advertisement location identifiers stored in geo-coded advertisement database 210 ( FIG. 4 ).
- a geo-fence i.e., a geographical boundary
- a geo-fence is defined by a maximum distance partially or wholly surrounding an advertisement at which a person (e.g., the monitored person 32 ) is deemed to be able to perceive or be exposed to an advertisement such that the advertisement can have some influence on the person to perform some action (e.g., request information, purchase a product/service, visit an advertised retail establishment, etc.) related to the advertisement.
- the data analyzer 208 may determine an area (e.g., a radial area, a pie shaped area fanning out from the advertisement location, or any other shaped area) surrounding, partially surrounding, and/or adjacent to the location of each advertisement.
- the data analyzer 208 may determine that a person was exposed to an advertisement if the person was within a particular distance from the advertisement and facing a particular direction or within a range of directions (e.g., the data analyzer 208 may use direction information generated by the PPM 30 using the compass 150 of FIG. 2 ).
- the data analyzer 208 determines whether the location event information retrieved at block 704 is indicative of a location inside the geo-fence (block 708 ). If the location is inside the geo-fence (block 708 ), the data analyzer 208 credits the advertisement corresponding to the geo-fence as having been exposed to the monitored person 32 (block 710 ). In the illustrated example, the data analyzer 208 credits the advertisement by storing a flag, an indicator, or some other information indicative of exposure credit in the advertisement exposure data structure 624 ( FIG. 6 ) in association with the advertisement identifier.
- the data analyzer 208 After the data analyzer 208 credits the advertisement (block 710 ) or if the data analyzer 208 determines that the location event information is not indicative of a location within the geo-fence (block 708 ), the data analyzer 208 determines whether another location event record remains to be analyzed (block 712 ). If at least another location event record remains to be analyzed (block 712 ), control returns to block 704 .
- the receiver 202 retrieves PPM-collected media representation information (e.g., audio/video/RF codes or signatures) (block 714 ) from, for example, the valid meter log data structure 610 ( FIG. 6 ).
- the data analyzer 208 then retrieves a media code or signature (block 716 ) from the retrieved PPM-collected media representation information to perform the audio/video/RF-based advertisement exposure analysis 620 .
- the data analyzer 208 determines whether any reference media codes or signatures match the retrieved media code or signature (block 718 ). For example, the data analyzer 208 may compare the retrieved media code or signature with reference media codes or signatures stored in the reference media codes/signatures database 211 of FIG. 4 .
- the data analyzer 208 determines that a reference media code or signature matches the retrieved media code or signature (block 718 ). In the illustrated example, the data analyzer 208 credits the advertisement by storing a flag, an indicator, or some other information indicative of exposure credit in the advertisement exposure data structure 624 ( FIG. 6 ) in association with the advertisement identifier. After the data analyzer 208 credits the advertisement (block 720 ) or if the data analyzer 208 determines that no reference media codes or signatures match the retrieved media code or signature (block 718 ), the data analyzer 208 determines whether another media code or signature remains to be analyzed (block 722 ). If at least another media code or signature remains to be analyzed (block 722 ), control returns to block 716 . Otherwise, the example process of FIG. 7 ends.
- FIG. 8 depicts a flow diagram of an example process that may be used to implement the query correlation analysis 612 of FIG. 6 .
- the receiver 202 retrieves the PPM-collected location data (block 802 ) from, for example, the valid log meter data structure 610 ( FIG. 6 ).
- the data analyzer 208 then retrieves a location event record timestamped within the previous (N) days (block 804 ).
- the previous (N) days specifies a recent history within which exposure to web event data (e.g., query search results) and/or advertisements could have some causal effect on a person's actions such as, for example, purchasing a product, purchasing a service, visiting a retail establishment, etc.
- the previous (N) days can specify the maximum time that can lapse between a monitored person submitting a query or being exposed to an advertisement and the person performing some action (e.g., visit a retail establishment, purchase a product/service, etc.) related to the query search results or that advertisement so that the query search results or advertisement can be credited as having influenced the monitored person to perform the action.
- the number of days (N) can be determined by a metering entity implementing the example methods and apparatus described herein.
- the number of days (N) can be determined based on a person's typical memory retention time of previously observed objects.
- the amount of lapsed time may be a number of hours instead of a number of days.
- the data analyzer 208 determines whether the retrieved location event information specifies a location indicative of the monitored person 32 having visited a retail establishment (block 806 ).
- the data analyzer 208 can compare the retrieved location event information to location information stored in the storefront and product geo-coded knowledgebase 212 of FIG. 4 to determine whether the retrieved location event information corresponds to a location of a retail establishment. If the retrieved location event information is indicative of a visitation to a retail establishment, the data analyzer 208 stores a tag, a flag, or some other information in connection with the retail establishment identifier to indicate that the retail establishment was visited by the monitored person 32 (block 808 ).
- the data analyzer 208 stores the tagged or flagged retail establishment identifier in a visited retail establishment data structure 810 and/or the advertisement exposure, queries, and retail establishment visits mapping data structure 628 of FIG. 6 .
- the data analyzer 208 determines whether another location event record timestamped within the previous (N) days remains to be analyzed (block 812 ). If another location event record remains (block 812 ), control is passed back to block 804 .
- the data analyzer 208 determines that no other location event record remains to be analyzed (block 812 ). If the data analyzer 208 determines that no other location event record remains to be analyzed (block 812 ), the data analyzer 208 retrieves advertisement identifiers of advertisements to which the monitored person 32 was exposed within the previous (N) days (block 814 ) and query results received by the PPM 30 within the previous (N) days (block 816 ). In the illustrated example, the data analyzer 208 retrieves the exposed to advertisement identifiers and the query results from the valid meter log data structure 610 ( FIG. 6 ). The data analyzer 208 then retrieves a query result record (block 818 ) from the query results retrieved at block 816 and determines whether the query result is associated with one or more advertisement exposures (block 820 ).
- the data analyzer 208 may compare the query result information with advertisements indicated in the advertisement exposure data 624 of FIG. 6 to determine whether the query result information is related to or associated with (e.g., the query result includes information about a product, service, or retail establishment advertised by the advertisement) any of the advertisements to which the monitored person was exposed. If the data analyzer 208 determines that the retrieved query result is associated with one or more advertisement exposures, the data analyzer 208 stores a tag, a flag, or some other information in association with the advertisement exposure information to indicate that the identified advertisements influenced the monitored person 32 to submit the query associated with the query results (block 822 ). In some example, implementations, the data analyzer 208 may alternatively or additionally compare query search terms or search criteria submitted by the monitored person 32 to the advertisements indicated in the advertisement exposure data 624 to determine whether any of the advertisements influenced the monitored person 32 to submit the query.
- the data analyzer 208 After the data analyzer 208 stores a tag, a flag, or some other information in association with the advertisement exposure information (block 822 ) or if the data analyzer 208 determines that the retrieved query result is not related to or associated with any advertisement exposures (block 820 ), the data analyzer 208 determines whether the query result information is associated with or related to one or more retail establishments visited by the monitored person 32 (block 824 ). For example, the data analyzer 208 can compare the query result information with visited retail establishment information stored in the visited retail establishment data structure 810 to determine whether any information associated with the retail establishments (e.g., name, street address, products offered, services offered, etc.) match or substantially match the query result information.
- any information associated with the retail establishments e.g., name, street address, products offered, services offered, etc.
- the data analyzer 208 determines that the query result information is associated with or related to one or more visited retail establishments (block 824 ). If the data analyzer 208 determines that the query result information is associated with or related to one or more visited retail establishments (block 824 ), the data analyzer 208 stores a tag, a flag, or some other information in association with the query result to indicate that the query result influenced the monitored person 32 to visit a retail establishment (block 826 ). In the illustrated example, the data analyzer 208 can store the tag, flag, or other information in association with the query result in the advertisement exposure, queries, and retail establishment visits mapping data structure 628 of FIG. 6 .
- the data analyzer 208 After the data analyzer 208 stores a tag, a flag, or some other information in association with the query result (block 826 ) or if the data analyzer 208 determines that the retrieved query result is not related to or associated with any visited retail establishments (block 824 ), the data analyzer 208 determines whether another query result received by the user within the previous (N) days remains to be analyzed (block 828 ). If the data analyzer 208 determines that at least another query result remains to be analyzed (block 828 ), control is passed back to block 818 . Otherwise, the example process of FIG. 8 is ended.
- FIG. 9 is a flow diagram of an example location information validation process that may be performed by the example apparatus 200 ( FIG. 4 ).
- the example process of FIG. 9 may be used to implement the example validation analysis of block 606 of FIG. 6 .
- the data receiver 202 retrieves a location event record from the data received from the location data log file 180 of the PPM 30 (block 902 ), and the fault detector 204 ( FIG. 4 ) determines whether the latitude coordinate is valid by determining whether the latitude coordinate is within a range between ⁇ 90 degrees and 90 degrees (block 904 ).
- the fault detector 204 determines whether the longitude coordinate is valid by determining whether the longitude coordinate is within ⁇ 180 degrees and 180 degrees (block 906 ). In other example implementations, other geographical coordinate systems having different ranges and/or units may be used. If the fault detector 204 determines that the longitude coordinate is valid (block 906 ), the data fault detector 204 returns a valid indicator to indicate that the retrieved location event record is valid (block 908 ).
- the fault detector 204 determines that the longitude coordinate is valid (block 906 ) or that the latitude coordinate is not valid (block 904 ), the fault detector 204 returns an invalid indicator to indicate that the retrieved location event record is not valid (block 910 ).
- the data file interface 206 stores a location information error indicator (block 912 ) in, for example, the valid meter log data structure 610 of FIG. 6 to indicate that the location coordinates were not valid.
- the fault detector 204 or the data file interface 206 then discards the invalid location event record from the location data (block 914 ).
- the fault detector 204 determines whether another location event record remains to be analyzed (block 916 ). If at least another location event record remains to be analyzed (block 916 ), control is passed back to block 902 . Otherwise, the example process of FIG. 9 is ended.
- FIG. 10A is a flow diagram for an example heartbeat process that may be performed by the processor 100 of the PPM 30 to generate heartbeat information that may subsequently be used to determine the validity of metering data collected by the PPM 30 .
- the processor 100 FIG. 2
- the processor 100 instantiates metering software (block 1002 ) used to collect the web event (e.g., query event), location event, media signal capture event, and/or purchase event information.
- the processor 100 then waits for a heartbeat timeout (block 1004 ).
- the heartbeat timeout is determined by the periodic time at which the PPM 30 generates a heartbeat message to confirm the presence or operation of the PPM 30 in the geographic area 10 .
- the PPM 30 may transmit heartbeat messages indicative of the heartbeat timeouts to the central facility 60 ( FIG. 1 ) substantially in real time, and the central facility 60 may analyze the heartbeat messages substantially in real time or during a post process to confirm that the PPM 30 is operational and/or within the geographic area 10 .
- the PPM 30 may store the heartbeat messages in the memory 104 ( FIG. 2 ) of the PPM 30 .
- the PPM 30 may store the heartbeat messages in the location data log file 180 ( FIG. 3 ) (or in any of the other data log files 182 , 184 , and 186 ), and the central facility 60 may analyze the heartbeat messages in connection with the location data log file 180 during a post process.
- the processor 100 determines whether it should communicate a heartbeat message indicative of the heartbeat timeout to the central facility 60 (block 1006 ). For example, the processor 100 may check a configuration setting (e.g., a transmit heartbeat message configuration bit) in the memory 104 to determine whether it should transmit the heartbeat message. If the processor 100 determines that it should communicate the heartbeat message to the central facility 60 (block 1006 ), the processor 100 transmits the heartbeat message to the central facility 60 via the communications interface 106 (block 1008 ). Otherwise, the processor 100 stores the heartbeat message locally (block 1010 ) in, for example, the location data log file 180 ( FIG. 3 ) in the memory 104 .
- a configuration setting e.g., a transmit heartbeat message configuration bit
- the processor 100 After transmitting the heartbeat message to the central facility 60 (block 1008 ) or after storing the heartbeat message locally (block 1010 ), the processor 100 determines whether it should wait for another heartbeat timeout (block 1012 ). For example, if the metering software is still instantiated, the processor 100 may determine that it should wait for another heartbeat timeout (block 1012 ) and control is passed back to block 1004 . Otherwise, the example process of FIG. 10A is ended.
- FIG. 10B is a flow diagram of an example heartbeat analysis process that may be performed by the example apparatus 200 ( FIG. 4 ) to examine data log files received from a PPM (e.g., the PPM 30 ) to determine whether data collected by the PPM is valid.
- the example process of FIG. 10B may be used to implement the example validation analysis of block 606 of FIG. 6 .
- the data receiver 202 reads a stored event record in the data received from PPM 30 (block 1020 ).
- the data receiver 202 can read the event record from data received from the location data log file 180 of FIG. 3 .
- the data fault detector 204 then reads heartbeat information (e.g., a heartbeat message) stored in the retrieved event record (block 1022 ) and determines whether the corresponding heartbeat occurred within a threshold period of a previous heartbeat (block 1024 ).
- the threshold period specifies an allowable time within which a heartbeat must occur to indicate that the PPM 30 is functioning properly. If the heartbeat did not occur within the threshold period (block 1024 ), the data fault detector 204 stores a missing heartbeat error event (block 1026 ) in an error file created by the data file interface 206 ( FIG. 4 ).
- the data fault detector 204 determines whether another event record remains to be analyzed (block 1028 ) and, if so, control is passed back to block 1020 . Otherwise, the example process of FIG. 10B is ended.
- FIG. 11A is a flow diagram of an example event sequence generation process that may be performed by the data collectors 164 , 166 , 168 , and 170 ( FIG. 3 ) of the PPM 30 to store sequential event counts in connection with respective event information that can subsequently be used to determine the validity of data collected by the PPM 30 .
- the data collector determines whether an event has occurred (block 1102 ).
- an event is the periodic reading or reception of location data such as longitude and latitude coordinates from the location and motion sensors 110 .
- the event is any action by the monitored person or results returned from the location-based web services application.
- the data collector continues to wait for an event (block 1102 ). Otherwise, if an event has occurred, the data collector stores the event information (block 1104 ) in, for example, a respective one of the log files 180 , 182 , 184 , and 186 . The data collector then increments an event count (block 1106 ) and stores the event count in association with the event information (block 1108 ). If the data collector is to wait for another event (block 1110 ), control is passed back to block 1102 . Otherwise, the example process of FIG. 11A is ended.
- FIG. 11B is a flow diagram of an example sequential event count confirmation process that may be performed by the example apparatus 200 ( FIG. 4 ) when a data is received from a PPM (e.g., the PPM 30 ).
- the example process of FIG. 11B may be used to implement the example validation analysis of block 606 of FIG. 6 .
- the example sequence confirmation process of FIG. 11B is used to monitor data integrity of information stored in data log files (e.g., the data log files 180 , 182 , 184 , and 186 of FIG. 3 ) and to identify any data integrity problems associated with the data log files.
- data log files e.g., the data log files 180 , 182 , 184 , and 186 of FIG. 3
- 11B may be used to detect missing data in a data log file (e.g., consecutively stored data records missing a data record therebetween), non-sequential data (e.g., consecutively stored data records that are out of sequence), storage medium errors (e.g., storage disk surface damages), write errors, file system errors, etc.
- a data log file e.g., consecutively stored data records missing a data record therebetween
- non-sequential data e.g., consecutively stored data records that are out of sequence
- storage medium errors e.g., storage disk surface damages
- write errors e.g., file system errors, etc.
- the data receiver 202 initially retrieves an initial event record (block 1112 ) and then reads a next event record (block 1114 ) from the data received from the PPM 30 corresponding to a data log file.
- the data fault detector 204 determines whether the next event record retrieved at block 1114 is in proper sequence (block 1116 ) relative to the initial event record retrieved at block 1112 based on the event counts of the event records. For example, the data fault detector 204 can compare the event counts stored in connection with block 1108 of FIG. 11A in the event records to determine whether they are sequential.
- the data fault detector 204 stores a sequence error indicator (block 1118 ) in an error log file via the data file interface 206 . After storing the sequence error indicator (block 1118 ) or if the data fault detector 204 determines that the events are sequential (block 1116 ), the data fault detector 204 determines whether there is another event record to be analyzed (block 1120 ). If there is another event record to be analyzed, control is passed back to block 1114 . Otherwise, the example process of FIG. 11B is ended.
- FIG. 12 is a flow diagram of an example speed detection and checking process which may be performed by the example apparatus 200 ( FIG. 4 ) to determine the validity of location data collected by the PPM (e.g., the PPM 30 ).
- the example process of FIG. 12 may be used to implement the example validation analysis of block 606 of FIG. 6 .
- the data receiver 202 increments a read counter by one (block 1202 ).
- the data receiver 202 then reads two successive location event records from data received from the PPM 30 (block 1204 ) corresponding to, for example, the location data log file 180 of FIG. 3 .
- the data fault detector 204 determines the speed of travel between the two location events (block 1206 ) by, for example, calculating the distance between the two locations and dividing by the time interval that elapsed between the collection of the two location events. The data fault detector 204 then determines whether the speed exceeds a threshold value (block 1208 ). If the speed exceeds the threshold value, an error is possible because the monitored person 32 is indicated as having traveled at an unexpected speed and the data fault detector 204 stores an error indicator (block 1210 ) in an error file via the data file interface 206 .
- the data fault detector 204 determines whether there is another event record remaining to be analyzed (block 1212 ) and, if so, control is passed back to block 1202 . Otherwise, the example process of FIG. 12 is ended.
- FIG. 13 is a flow diagram of an example process that may be performed by the PPM 30 to determine whether there is sufficient movement to indicate that the PPM 30 was moved from one location to another.
- the example process of FIG. 13 may be implemented in real time by the PPM 30 or as a post process by the example apparatus 200 of FIG. 4 .
- the example process is described below as a post process performed by the example apparatus 200 .
- the data receiver 202 reads current location information (block 1302 ) received from, for example, the location data log file 180 of FIG. 3 .
- the data fault detector 204 determines whether the current location is the same as a previous location read (block 1304 ).
- the data fault detector 204 adds the elapsed duration between the entries to a no-movement duration value (block 1306 ). The data fault detector 204 then compares the no-movement duration value to a duration threshold to determine whether the no-movement duration is greater than the duration threshold (block 1308 ). If the no-movement duration is greater than the duration threshold, it is likely that the PPM 30 has not been moved for an excessive amount of time, which may indicate an error condition such as the monitored person 32 leaving the PPM 30 somewhere or the PPM is not functioning properly.
- the data fault detector 204 stores a no-movement event (block 1310 ) in an error file via the data file interface 206 . After storing the no-movement event (block 1310 ) or if the data fault detector 204 determines that the previous and current locations are not the same (block 1304 ), the data fault detector 204 resets the no-movement duration value (block 1312 ) and determines whether it should continue processing the location information (block 1314 ).
- FIG. 14 is a flow diagram of an example process that may be performed by the example apparatus 200 ( FIG. 4 ) to detect missing location event entries in location data log files received by the central facility 60 from a PPM such as the location data log file 180 of the PPM 30 .
- the example process of FIG. 12 may be used to implement the example validation analysis of block 606 of FIG. 6 .
- the data fault detector 204 initializes a data variable relating to the duration since the last location event by setting the data variable to zero (block 1402 ).
- the data receiver 202 then reads a next event record (block 1404 ) from data received from the PPM 30 .
- the fault detector 204 determines whether the retrieved event record is a location event record (block 1406 ).
- the fault detector 204 determines the duration between the previous event and the event record retrieved at block 1404 (block 1408 ). The fault detector 204 then adds the duration to the duration since the last location event variable (block 1410 ). The fault detector 204 then determines whether the duration since the last location event exceeds a threshold duration (block 1412 ). If the duration exceeds the threshold (block 1412 ), the fault detector 204 stores a missing location information event indicator in an error log file via the data file interface 206 (block 1414 ).
- the fault detector 204 After storing the missing location event indicator (block 1414 ) or if the duration does not exceed the threshold (block 1412 ), the fault detector 204 resets the duration since last location event variable (block 1416 ) and determines whether another event record remains to be processed (block 1418 ). If another event record remains to be processed (block 1418 ) or if the fault detector 204 determines that the event record is not a location event (block 1406 ), control is passed back to block 1404 . Otherwise, the example process of FIG. 14 is ended.
- FIG. 15 shows an example process that may be implemented by the central facility 60 to answer database requests from advertisers or business users related to behaviors of monitored persons (e.g., the monitored persons 32 , 38 , and 40 ) associated with advertisements and/or query search results.
- the central facility 60 receives a report request from a business user (block 1502 ).
- the inquiry requests information about the exposure to an advertisement or advertisements by a monitored person or persons and includes one or more criteria indicative of those advertisements.
- the request and criteria are then communicated to the analysis server 74 ( FIGS. 1 and 4 ) (block 1504 ).
- the analysis server 74 then runs the query and determines whether any of the criteria in the received request relate to any queries submitted by a monitored person or persons and advertisements to which those monitored persons were exposed (block 1506 ). For example, the analysis server 74 may compare the received criteria with data in the advertisement exposure, queries, and retail establishment visits mapping data structure 628 . The analysis server 74 retrieves all relevant advertisement exposure events and corresponding timestamps (block 1508 ) for each query made by a monitored person while within the radius of the advertisement or sometime after the monitored person was within the radius of the advertisement. The analysis server 74 then correlates behavior of the monitored person to the advertisement type, advertisement size, repetitions of exposures to the advertisement, and/or any other desired factors (block 1512 ). The analysis server 74 then generates a report (block 1512 ) using the identified data in response to the report request received from the business user.
- FIG. 16 is an example flow diagram of a location and advertisement exposure correlation process that may be performed by the PPM 30 in the geographical area 10 of FIG. 1 and the example apparatus 200 ( FIG. 4 ) to determine the advertisements to which the monitored person 32 was exposed.
- the PPM 30 determines whether the monitored person 32 is wearing the PPM 30 (block 1602 ). If the monitored person 32 is not wearing the PPM 30 , the example process waits at block 1602 until the PPM 30 detects that the monitored person 32 is wearing the PPM 30 . When the monitored person 32 is wearing the PPM 30 (block 1602 ), the PPM 30 determines whether a duration elapsed since the last location acquisition is greater than a scheduled interval (block 1604 ).
- the location data collector 164 acquires location information (block 1606 ) from, for example, the location/motion sensors 110 ( FIGS. 2 and 3 ).
- the location data collector 164 stores the location information (block 1608 ) in, for example, the location data log file 180 ( FIG. 3 ).
- the location data collector 164 then communicates the location event data from the location data log file 180 to the central facility 60 (block 1610 ) where it is stored in a consumer location history database 1614 .
- the location history database 1614 may be implemented using the PPM location file 80 or may be used to store various PPM location files 80 .
- the example apparatus 200 can then correlate the locations of the monitored person 32 with advertisements identified in the geo-coded advertisement database 210 (block 1612 ) to which the monitored person 32 was likely exposed (block 1612 ).
- the process of block 1612 can be implemented using one or more of the processes described above to determine the advertisements to which the monitored person 32 was exposed.
- the process of block 1612 can store the correlation results in an advertisement exposure database 1616 .
- the example apparatus can store the advertisement exposure data structure 624 ( FIG. 6 ) and/or the advertisement exposure, queries, and retail establishment visits mapping data structure 628 ( FIG. 6 ) in the advertisement exposure database 1616 .
- the example machine accessible instructions of the flow diagrams of FIGS. 5A , 5 B, 6 - 9 , 10 A, 10 B, 11 A, 11 B, and 12 - 16 may be executed by a processor, a controller and/or any other suitable processing device.
- the example machine accessible instructions of FIGS. 5A , 5 B, 6 - 9 , 10 A, 10 B, 11 A, 11 B, and 12 - 16 may be embodied in coded instructions stored on a tangible medium such as a flash memory, or random access memory (RAM) associated with a processor.
- a tangible medium such as a flash memory, or random access memory (RAM) associated with a processor.
- RAM random access memory
- 5A , 5 B, 6 - 9 , 10 A, 10 B, 11 A, 11 B, and 12 - 16 may be implemented using an application specific integrated circuit (ASIC), a programmable logic device (PLD), a field programmable logic device (FPLD), discrete logic, hardware, firmware, etc. Also, some or all of the example flow diagrams of FIGS. 5A , 5 B, 6 - 9 , 10 A, 10 B, 11 A, 11 B, and 12 - 16 may be implemented manually or as combinations of any of the foregoing techniques including, for example, a combination of firmware, software and/or hardware. Further, although the example machine accessible instructions of FIGS.
- FIGS. 5A , 5 B, 6 - 9 , 10 A, 10 B, 11 A, 11 B, and 12 - 16 are described with reference to the flow diagrams of FIGS. 5A , 5 B, 6 - 9 , 10 A, 10 B, 11 A, 11 B, and 12 - 16 , persons of ordinary skill in the art will readily appreciate that many other techniques of implementing the example methods, apparatus, and systems described herein may be employed. For example, the order of execution of the blocks may be changed, and/or some of the blocks described may be changed, eliminated, sub-divided, or combined. Additionally, persons of ordinary skill in the art will appreciate that the example machine accessible instructions of FIGS. 5A , 5 B, 6 - 9 , 10 A, 10 B, 11 A, 11 B, and 12 - 16 may be carried out sequentially and/or carried out in parallel by, for example, separate processing threads, processors, devices, circuits, etc.
- FIG. 17 is a block diagram of an example processor system 1710 that may be used to implement the methods, apparatus, and systems described herein including.
- the processor system 1710 includes a processor 1712 that is coupled to an interconnection bus 1714 .
- the processor 1712 includes a register set or register space 1716 , which is depicted in FIG. 17 as being entirely on-chip, but which could alternatively be located entirely or partially off-chip and directly coupled to the processor 1712 via dedicated electrical connections and/or via the interconnection bus 1714 .
- the processor 1712 may be any suitable processor, processing unit or microprocessor.
- the system 1710 may be a multi-processor system and, thus, may include one or more additional processors that are identical or similar to the processor 1712 and that are communicatively coupled to the interconnection bus 1714 .
- the processor 1712 of FIG. 17 is coupled to a chipset 1718 , which includes a memory controller 1720 and an input/output (I/O) controller 1722 .
- a chipset typically provides I/O and memory management functions as well as a plurality of general purpose and/or special purpose registers, timers, etc. that are accessible or used by one or more processors coupled to the chipset 1718 .
- the memory controller 1720 performs functions that enable the processor 1712 (or processors if there are multiple processors) to access a system memory 1724 and a mass storage memory 1725 .
- the system memory 1724 may include any desired type of volatile and/or non-volatile memory such as, for example, static random access memory (SRAM), dynamic random access memory (DRAM), flash memory, read-only memory (ROM), etc.
- the mass storage memory 1725 may include any desired type of mass storage device including hard disk drives, optical drives, tape storage devices, etc.
- the I/O controller 1722 performs functions that enable the processor 1712 to communicate with peripheral input/output (I/O) devices 1726 and 1728 and a network interface 1730 via an I/O bus 1732 .
- the I/O devices 1726 and 1728 may be any desired type of I/O device such as, for example, a keyboard, a video display or monitor, a mouse, etc.
- the network interface 1730 is communicatively coupled to the network 62 and may be, for example, an Ethernet device, an asynchronous transfer mode (ATM) device, an 802.11 device, a DSL modem, a cable modem, a cellular modem, etc. that enables the processor system 1710 to communicate with another processor system.
- ATM asynchronous transfer mode
- memory controller 1720 and the I/O controller 1722 are depicted in FIG. 17 as separate functional blocks within the chipset 1718 , the functions performed by these blocks may be integrated within a single semiconductor circuit or may be implemented using two or more separate integrated circuits.
Abstract
Description
- This patent is a continuation of International Patent Application Serial No. PCT/US2007/72544, filed on Jun. 29, 2007, which claims the benefit of U.S. Provisional Patent Application No. 60/817,610, filed Jun. 29, 2006, both of which are hereby incorporated herein by reference in their entireties.
- The present disclosure relates generally to media monitoring and, more particularly, to methods and apparatus to monitor consumer behavior associated with location-based web services.
- Advertisers, retail establishments, product manufacturers, service providers, and other types of businesses are often interested in the behaviors of consumers related to their exposure to advertising and/or other informational media to better market their products or services. Business often use advertising or other information or promotional material to draw attention and interest to their products or services. Web-based technology also offers businesses the ability to make information about their products or services available on the Internet. People wishing to learn more about particular products or services can retrieve information via the Internet using, for example, search engines, or other Internet-enabled query-based applications.
- Although businesses know that advertisements and other promotional information has the effect of influencing people to make purchasing decisions, the influential power of such advertisements and promotional information cannot be readily assessed by merely publicizing the advertisements and/or other information. A traditional technique for determining the effectiveness of an advertising campaign involves monitoring the sales quantities of the advertised product or service before and/or during the implementation of the advertising campaign. Another traditional technique for determining the effectiveness of an advertising campaign involves selecting a panel of consumers to observe various advertisements within a controlled environment and subsequently asking the consumers whether the advertisements would have influenced them to make purchases.
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FIG. 1 illustrates an example system for collecting location data and providing web services to a monitored individual to monitor consumer behavior and measure effectiveness of advertising media and other information related to products, services, and/or retail establishments. -
FIG. 2 is a block diagram of an example personal portable meter (PPM) device ofFIG. 1 . -
FIG. 3 is a more detailed block diagram of a portion of the example PPM ofFIGS. 1 and 2 . -
FIG. 4 is a block diagram of an example data analysis apparatus that may be used to analyze data collected by the example PPM ofFIGS. 1-3 . -
FIGS. 5A and 5B depict a flow diagram representative of example machine readable instructions that may be executed to collect data using the example PPM ofFIGS. 1-3 . -
FIG. 6 is a flow diagram representative of example machine readable instructions that may be executed to analyze data collected by the example PPM ofFIGS. 1-3 . -
FIG. 7 is a flow diagram representative of example machine readable instructions that may be executed to determine advertisements to which monitored persons were exposed based on data collected by the PPM ofFIGS. 1-3 . -
FIG. 8 is a flow diagram representative of example machine readable instructions that may be executed to correlate advertisement exposure and/or visitations to retail establishments with events related to queries submitted by a monitored person via the PPM ofFIGS. 1-3 . -
FIG. 9 is a flow diagram representative of example machine readable instructions that may be executed to implement a location data validation process to determine the validity of location data collected by the PPM ofFIGS. 1-3 . -
FIG. 10A is a flow diagram representative of example machine readable instructions that may be executed to generate and store heartbeat information that may subsequently be used to determine the validity of data collected by the PPM ofFIGS. 1-3 . -
FIG. 10B is a flow diagram representative of example machine readable instructions that may be executed to determine the validity of data collected by the PPM based on the heartbeat information generated using the example process ofFIG. 10A . -
FIG. 11A is a flow diagram representative of example machine readable instructions that may be executed to generate and store sequential event counts in connection with respective data collected by the PPM ofFIGS. 1-3 and that can subsequently be used to determine the validity of the collected data. -
FIG. 11B is a flow diagram representative of example machine readable instructions that may be executed to determine the validity of the data collected by the PPM ofFIGS. 1-3 based on the event counts generated using the example process ofFIG. 11A . -
FIG. 12 is a flow diagram representative of example machine readable instructions that may be executed to determine the validity of location data collected by the PPM ofFIGS. 1-3 . -
FIG. 13 is a flow diagram representative of example machine readable instructions that may be executed to determine whether there is sufficient movement to indicate that the PPM ofFIGS. 1-3 was moved from one location to another. -
FIG. 14 is a flow diagram representative of example machine readable instructions that may be executed to detect missing location event entries in location data collected by the PPM ofFIGS. 1-3 . -
FIG. 15 is a flow diagram representative of example machine readable instructions that may be executed to answer database requests from advertisers or business users related to behaviors of monitored persons associated with advertisements and query search results. -
FIG. 16 is a flow diagram representative of example machine readable instructions that may be executed to determine the advertisements to which monitored persons were exposed based on data collected by the PPM ofFIGS. 1-3 . -
FIG. 17 is a block diagram of an example processor system that may be used to implement portions of the system ofFIG. 1 . - Although the following discloses example methods, apparatus, and systems including, among other components, software executed on hardware, it should be noted that such methods, apparatus, and systems are merely illustrative and should not be considered as limiting. For example, it is contemplated that any or all of the hardware and software components described herein could be embodied exclusively in hardware, exclusively in software, exclusively in firmware, or in any combination of hardware, firmware, and/or software. Accordingly, while the following describes example methods, apparatus, and systems, persons having ordinary skill in the art will readily appreciate that the examples provided are not the only way to implement such methods, apparatus, and/or systems.
- Turning to
FIG. 1 , for purposes of discussion the example methods and apparatus are described herein with respect to an examplegeographic area 10 including indoor and outdoor regions. However, the example methods and apparatus described herein may be used in any area or environment. - Information about a monitored individual's behavior may be determined/estimated using location information and/or motion information measured using a personal portable meter (PPM). Location information may include, for example, geographic area coordinates, global position coordinates, local area position coordinates, relative position coordinates, or any other type of location indication information that, when analyzed, may be used to determine the location of a person (e.g., a monitored individual) and/or the movements of a person from one location to another. Location information may also include distances between a person and a media source, such as, for example, a billboard, a print display (e.g., a poster), a video presentation device, an audio presentation device, etc. As described in greater detail below, location information may be collected, obtained, generated, etc. using any suitable location detection device(s), location detection system(s), and/or location detection technique(s). Specifically, the location detection devices described below may be worn or otherwise carried by a person or monitored person and/or may be part of the PPM.
- Media monitoring information may include any information associated with media that is exposed to and/or consumed (e.g., viewed, listened to, interacted with, etc.) by a monitored person. Media presentations may include, for example, a television program, a radio program, movies, songs, advertisements, Internet information, and/or any other video information, audio information, still image information, and/or computer information to which a person may be exposed. Media monitoring information may be generated based on, for example, audio codes, signatures (e.g., a representation of any characteristic of monitored audio such as, for example, a characteristic of a program signal), radio frequency (RF) codes, and/or any other codes, information, or identifiers that may be extracted from and/or otherwise associated with a media presentation to which a monitored person is exposed. As described in greater detail below, media monitoring information may be collected, generated, obtained, etc. using any suitable media consumption detection device and/or any suitable media consumption detection technique.
- The example
geographic area 10, in which the example methods and apparatus described herein may be implemented, includes anexample business 12, which may sell products and/or services. The examplegeographic area 10 also includes various media that may be used to present advertisements or other information (e.g., product/services information, entertainment audio/video, etc.). In particular, the examplegeographic area 10 includes a billboard 14, anaudio device 16, which may play or present audio advertising, and avideo device 18, which may present video advertising. In the illustrated example, theaudio device 16 may be implemented using a stationary audio device or system (e.g., a stationary stereo, a stationary audio playback device, a kiosk, etc.) configured to present audio advertisements and/or other types of audio information, and thevideo device 18 may be implemented using a stationary video device or system (e.g., a stationary television, a stationary video monitor, a kiosk, etc.) to present video advertisements and/or other types of video information. In the illustrated example, themedia media - In the illustrated example, a
billboard 20 is provided with a radio frequency (RF) transmitter/receiver 22 to detect a PPM and/or be detected by a PPM. TheRF transmitter 22 may be configured to emit location information indicative of the location of thebillboard 20 and/or an advertisement identifier indicative of an advertisement presented by thebillboard 20. Additionally or alternatively, the RF transmitter/receiver 22 can be configured to receive location and/or identification information from a PPM. In some example implementations, RF transceivers substantially similar or identical to the RF transmitter/receiver 22 may be provided to other media (e.g., the billboard 14, theaudio device 16, and the video device 18). - The example
geographic area 10 ofFIG. 1 also includes anexample PPM 30 worn and/or carried by a monitoredperson 32. Additional example PPM's 34 and 36 are carried by other monitoredpersons geographic area 10 to increase the amount of data collected such as, for example, data associated with actions (e.g., queries, retail establishment visitations, purchases, etc.) of users (e.g., thepersons media example PPM 30 may operate inside and/or outside structures such as thebusiness 12, and may employ one or more communication techniques and/or communication systems including, but not limited to, systems to communicate with a location system such as anRF transceiver tower 42 and/or apositioning satellite 44. - As described below, the
example PPM 30 includes a location-based web service application that allows a monitored person (e.g., the monitored person 32) to obtain web-based information associated with their location. ThePPM 30 receives web-based data from aweb server 50 via anetwork 52, which in this example is the Internet. Theweb server 50 is coupled to alocation database 54 and anapplication server 56, which enables theweb server 50 to return locality specific information from thelocation database 54 to inquiries or queries made to the location-based web service application by the monitoredperson 32. - In the illustrated example, the
PPM 30 is communicatively coupled to acentral facility 60 via anetwork 62 to allow data transfer from thePPM 30. Thenetwork 62 may be implemented using any suitable communication interface including, for example, a telephone system, a cable system, a satellite system, a cellular communication system, AC power lines, a network, the Internet, etc. Thecentral facility 60 of the illustrated example is communicatively coupled to other monitored sites such as thebillboard 20 and/or broadcast sites that transmit programming and/or advertising to theaudio device 16 and/or thevideo device 18. Thecentral facility 60 may obtain media exposure data, consumption data, media monitoring data, location data, motion data, and/or any other monitoring data that are collected by the media monitoring devices such as, for example, thePPM 30. In the illustrated example, thePPM 30 may transmit data to alocal relay device 64 which, in turn, transmits data to thecentral facility 60 to extend the range of the examined or monitored geographic area. Theexample system 10 may be provided with multiplelocal relay devices 64 that serve as access points for thePPM 30 and other devices to thenetwork 62 and thecentral facility 60. - In the illustrated example, the
central facility 60 includes a server 70 (i.e., a central processor system) and adatabase 72. Theserver 70 may be implemented using, for example, a processor system similar or identical to theexample processor system 1712 depicted inFIG. 17 that is configured to store data collected from the PPM's in thedatabase 72 and/or to analyze the collected data. Thedatabase 72 may be implemented using any suitable memory and/or data storage apparatus and technique(s). Thedatabase 72 of the illustrated example includes aPPM location file 80, which stores data relating to locations tracked by the PPM's such as thePPM 30, amedia location file 82, and a webevent use file 84. Themedia location file 82 stores the geographic location of each media presentation device or structure such as thebillboards audio device 16 and thevideo device 18 in association with identifiers corresponding to those media presentation devices or structures. The webevent use file 84 records all uses by the monitoredpersons - The
central facility 60 of the illustrated example also includes an analysis server 74 (e.g., an analyzer). Theanalysis server 74 allows an interested party such as a media monitoring entity or business to analyze collected data stored in thedatabase 72. In the illustrated example, theanalysis server 74 is configured to perform analysis such as correlations (e.g., identifying relationships or associations) between monitored persons, locations, advertisements, inquiries made via location-based information applications, retail establishments visited by the monitored persons, and/or purchases of the monitored persons. The operations of theanalysis server 74 are described below. - Location information and/or motion information may be continuously collected in indoor environments and/or outdoor environments via, for example, the
example PPM 30 that may be carried or worn by a monitored person (e.g., the monitored person 32) as shown inFIG. 1 . Theexample PPM 30, discussed in further detail in connection withFIG. 2 , may be implemented as a standalone device and/or integrated or jointly configured with another communication device such as, for example, a mobile telephone (e.g., a cordless telephone or a cellular-type telephone), a portable audio device (e.g., an IPOD® by Apple Computer, Inc.), a portable digital communicator, and/or a personal digital assistant (PDA). -
FIG. 2 is a detailed block diagram of an example implementation of thePPM 30 ofFIG. 1 . As discussed above, thePPM 30 may be used to monitor the use of a location-based web service application by a monitored person (e.g., the monitoredperson 32 ofFIG. 1 ). It may also be used to collect location information and/or motion information associated with the use of the location-based web application. In general, thePPM 30 includes electronic components configured to detect and/or collect media monitoring information, location information, and/or motion information, and to communicate the information to thecentral facility 60 ofFIG. 1 for subsequent analyses. As shown inFIG. 2 , thePPM 30 includes aprocessor 100, a voice coder/decoder (CODEC) 102, amemory 104, acommunication interface 106, a plurality ofmedia monitoring sensors 108, a plurality of location andmotion sensors 110, aninput interface 114, avisual interface 116 and a timer/counter 118, all of which are communicatively coupled as shown. - The
processor 100 may be any processor suitable for controlling thePPM 30. Theprocessor 100 of the illustrated example is responsible for managing and/or processing a location-based web service application and/or collecting, monitoring data related to detected media exposure, media consumption, media presentations, meter location, and/or meter motion. For example, theprocessor 100 may be implemented using a general purpose processor, a digital signal processor, or any combination thereof. Theprocessor 100 may be configured to perform and control one or more operations and/or features of thePPM 30 such as, for example, setting thePPM 30 in different operating modes, controlling a sampling frequency for collecting media monitoring information, compressing collected information (e.g., collected tuning information, collected location information, and/or collected motion information), managing communication operations with other processor systems (e.g., thecentral facility 60 ofFIG. 1 ), selecting location information systems (e.g., theRF transceiver tower 42, thepositioning satellite 44, and/or the relay devices 64), and executing location-based web service applications. - The
memory 104 may be used to store collected media monitoring information, program instructions (e.g., software, firmware, etc.), program data (e.g., location information, motion information, etc.), and/or any other data or information required to operate thePPM 30 and/or to implement the example methods and apparatus described herein. For example, after acquiring location information, motion information, and/or media monitoring information, theprocessor 100 may timestamp the acquired information and store the timestamped information in thememory 104. Theprocessor 100 may also store information indicative of use of a location-based web service application, timestamp the acquired information, and store the timestamped information in thememory 104. Thememory 104 may be implemented using any suitable volatile and/or non-volatile memory such as, for example, a random access memory (RAM), a read-only memory (ROM), a flash memory device, a hard drive, an optical storage medium, etc. In addition, thememory 104 may be any removable or non-removable storage medium. - The
communication interface 106 may be used to communicate information between thePPM 30 and other systems including, for example, thecentral facility 60, and/or theweb location server 50 ofFIG. 1 . Thecommunication interface 106 may be implemented using any type of suitable wired or wireless transmitter, receiver, or transceiver such as, for example, a Bluetooth® compliant transceiver, an IEEE 802.11 (i.e., Wi-Fi®) compliant transceiver, a cellular communications transceiver, an optical communications transceiver, a network port, a universal serial bus (USB) port, etc. - The
media monitoring sensors 108 of the illustrated example include anaudio sensor 130, anoptical transceiver 132, anRF transceiver 134, and abar code reader 136. Theexample PPM 30, via theaudio sensor 130, theoptical sensor 132, theRF transceiver 134 and/or thebar code reader 136 may be configured to observe or monitor the environment in which the monitoredperson 32 is located to detect advertisements, products, media presentations, and/or signals associated with the advertisements, the products, and/or the media presentations. When one of thesensors 108 detects an advertisement, a product, or a media presentation, theexample PPM 30 logs or stores a representation (e.g., a signature, a code, etc.) of the detected advertisement, product, or media presentation and/or an identifier (e.g., a code) thereof in thememory 104, along with a timestamp indicative of the time at which the information was detected. - The audio sensor or
transducer 130 may be, for example, a condenser microphone, a piezoelectric microphone or any other suitable transducer capable of converting audio information into electrical information. Theoptical transceiver 132 may be, for example, a transmitter and receiver combination including a light sensor (e.g., a light sensitive diode, an IR sensor, a complimentary metal oxide semiconductor (CMOS) sensor array, a charge-coupled diode (CCD) sensor array, etc.) and a light emitter (e.g., a light emitting diode (LED), etc.). TheRF transceiver 134 may be, for example, a Bluetooth® compliant transceiver, an IEEE 802.11 compliant transceiver, an ultrawideband RF receiver, and/or any other RF receiver and/or transceiver that detects signals from an example RF transceiver such as theRF transceiver 22 of thebillboard 20 ofFIG. 1 . While theexample PPM 30 ofFIG. 1 includes theaudio sensor 130, theoptical transceiver 132, theRF transceiver 134, and thebar code reader 136, theexample PPM 30 need not include all of thesensors audio sensor 130 may be sufficient to detect audio and/or video information (e.g. audio and/or video advertisements) to generate and/or collect identification characteristics and/or identifiers, such as signatures and/or, if they are present, audio measurement codes which may be inserted for the purpose of audience measurement. Additionally, in some example implementations, theoptical transceiver 132 may be sufficient to detect still picture and/or video information to generate and/or collect identification characteristics, such as signatures and/or, if present, video codes. However, because video monitoring generally requires a line of sight between thePPM 30 and the detected media, theexample PPM 30 may be provided with theaudio sensor 130 and theoptical transceiver 132. - To detect location-related information and/or motion-related information, the
processor 100 of the illustrated example is communicatively coupled to the location andmotion sensors 110. The location andmotion sensors 110 may include anultrasonic transceiver 142, amotion sensor 144, a satellite positioning system (SPS)receiver 146, anRF location interface 148, and/or acompass 150. In some example implementations, theaudio sensor 130 may also be configured to function as a location sensor by receiving ultrasonic signals from an ultrasonic source, such as an ultrasonic transmitter on therelay devices 64, on other portable units, and/or on other stationary units located throughout one or more areas. - Some of the location and
motion sensors 110 may be configured to receive location-related information (e.g., encoded information, pluralities of fragmented information, etc.) and to perform any processing necessary to convert the received information to location information that indicates the location of thePPM 30. For example, the PPM 330 may generate location information using triangulation techniques by receiving RF signals from three or more RF transmitters (e.g., three or more of therelay devices 64 or theRF transceiver tower 42 ofFIG. 1 ), and triangulating or processing the combination of RF signals. Some of the location andmotion sensors 110 may be configured to process received location-related signals to generate location information, and others of the location andmotion sensors 110 may be configured to communicate the location-related signals to theprocessor 100, and theprocessor 100 may be configured to process the received location-related signals using, for example, software and/or hardware processes to generate location information. In some example implementations, the location andmotion sensors 110 may process the received information in combination with theprocessor 100 to generate the location information. - The
ultrasonic transducer 142 may be used to enable thePPM 30 and/or therelay devices 64 to determine a location of thePPM 30. In some example implementations, theultrasonic transducer 142 may be configured to work in combination with theRF location interface 148, theRF transceiver 134, and/or theoptical transceiver 132 to determine a distance between thePPM 30 and a particular stationary unit such as thetransceiver tower 42. For example, thePPM 30 may transmit an ultrasonic chirp and RF signal simultaneously. Because the ultrasonic chirp propagates to thetransceiver tower 42 at the speed of sound, and the simultaneously transmitted RF chirp propagates at the speed of light, the signals reach thesame transceiver tower 42 at different times (i.e., the RF chirp arrives before the ultrasonic chirp). The distance between thePPM 30 and thetransceiver tower 42 may be calculated based on the distinct times of arrival, as described in further detail below. - The
motion sensor 144 may be used to detect relatively small body movements of a monitored person (e.g., the monitored person 32). Themotion sensor 144 may also generate motion information related to the body movements, and communicate the motion information to theprocessor 100. Themotion sensor 144 may be implemented using any suitable motion detection device such as, for example, a mercury switch, a trembler, a piezo-gyroscope integrated circuit (IC), an accelerometer IC, etc. - The SPS receiver (SPSR) 146 may be implemented using, for example, a GPS receiver and may be configured to generate location information based on encoded GPS signals received from GPS satellites such as the
positioning satellite 44 inFIG. 1 . In general, theSPS receiver 146 may be used by thePPM 30 to collect location information in outdoor environments. The GPS data can be stored as latitude and longitudinal coordinates. - The
RF location interface 148 may be implemented using a receiver and/or a transceiver and may be used to receive location-related signals and/or information from a location information system such as, for example, theRF transceiver tower 42 and/or therelay devices 64. For example, theRF location interface 148 may use transmission towers such as the RF transceiver towers 42 to determine the location of thePPM 30 using a method such as, for example, angle of arrival (AOA), time difference of arrival (TDOA), and/or enhanced observed time difference of arrival (EOTD). Additionally or alternatively, methods including, for example, advanced forward link trilateration (AFLT) or Enhanced Forward Link Trilateration (EFLT) may be used to determine the locations of thePPM 30. - The
RF location interface 148 may also be configured to broadcast location-related information such as, for example, time-stamped PPM identification codes. The time-stamped PPM identification codes may be received by, for example, three or more of the relay devices such as therelay device 64, which may process the codes cooperatively using triangulation techniques to determine the location of thePPM 30. Therelay devices 64 may communicate the received time-stamped PPM identification codes to thecentral facility 60 along with information relating to the times at which the codes were received by each of therelay devices 64. Thecentral facility 60 may then determine the location of thePPM 30 based on this information. - The
RF location interface 148 may be implemented using any suitable RF communication device such as, for example, a cellular communication transceiver, a Bluetooth® transceiver, an 802.11 transceiver, an ultra-wideband RF transceiver, etc. In addition, theRF location interface 148 may be implemented using only an RF receiver or only an RF transmitter. Examples of known location-based technologies that may be implemented in connection with the RF location interface 228 include an Ekahau Positioning Engine™ by Ekahau, Inc. of Saratoga, Calif. and an ultrawideband positioning system by Ubisense, Ltd. of Cambridge, United Kingdom. - Another example technique that may be used to determine the location of the
PPM 30 using theultrasonic sensor 142 and theRF location interface 148 inFIG. 2 involves communications between therelay device 64 and thePPM 30. In particular, therelay device 64 is separated by a distance “x” from thePPM 30. Therelay device 64 initiates a location determination process (distance determination) by emitting a chirp, which includes a simultaneous radio frequency (RF) chirp with an ultrasonic chirp. Therelay device 64 may transmit the RF chirp with an RF location transceiver and transmit the ultrasonic chirp with an ultrasonic transducer. The RF chirp transmitted by therelay device 64 may further include an embedded relay device identifier associated with therelay device 64. RF signals (electromagnetic radiation) propagate at 186,282 miles per second, whereas the speed of sound propagates at a substantially slower speed of about 0.2057 miles per second. Because the RF chirp propagation time travels at the speed of light, thePPM 30 receives the RF chirp first and initiates the timer/counter 218. Accordingly, thePPM 30 is “armed” and waiting to detect the ultrasonic chirp via theultrasonic sensor 142. Upon receipt of the ultrasonic chirp by thePPM 30, thePPM 30 stops the timer/counter 218 and calculates the distance between therelay device 64 and thePPM 30 as a function of the elapsed time and the known propagation rate of sound. Audio sampling rates of computers, PDA's, and other audio hardware typically exceeds 8000 samples per second. Such a sample rate yields a resolution of 0.125 milliseconds per sample, which is sufficient for purposes of monitored person distance determination. - The
relay device 64 andPPM 30 may, additionally or alternatively, repeat the distance determination process any number of times to verify an accurate measurement. For example, five iterations of the distance determination process may be performed in which thePPM 30 calculates an average distance from the five samples. The average distance value is then transmitted to therelay unit 64 via an encoded RF signal. Still further, thePPM 30 may send the raw elapsed time data back to therelay device 64 rather than perform such calculations on theprocessor 100. Processing the raw data at therelay device 64 rather than at thePPM 30 allows thePPM 30 to consume less power for calculations and/or reduce the size requirements of thememory 104. Therelay device 64 can then communicate the determined location information to thePPM 30. - If necessary, or if different degrees of accuracy are desired, adjustments to the calculation may be implemented to accommodate for variations in air temperature, ambient pressure, and/or atmospheric density. Such calculations are stored in the
memory 104 of thePPM 30 and executed by theprocessor 100 to yield the distance “x.” ThePPM 30 can then generate location information based on the calculated distance and store the location information in thememory 104 for later communication to thecentral facility 60. - The
compass 150 may be implemented using a magnetic field sensor, an electronic compass integrated circuit (IC), and/or any other suitable electronic circuit. In general, thecompass 150 may be used to generate direction information, which may be useful in determining the direction in which a monitored person (e.g., the monitored person 32) is facing. The direction information may also be used to determine if a person is facing, for example, thebillboard 20 so that when thePPM 30 receives an RF identification signal from thetransceiver 22, corresponding to thebillboard 20 inFIG. 1 and location information indicating that the monitoredperson 32 is in front of thebillboard 20, the direction information from thecompass 150 may be used to determine if the monitoredperson 32 is facing thebillboard 20 and, thus, is exposed to the media. In this manner, the content of thebillboard 20 may be credited appropriately for being viewed by or exposed to a monitored person. - An example positioning technology that may be used in combination with the
compass 150, themotion sensor 144, and theSPS receiver 146 is the Dead-Reckoning Module (DRM®) produced and sold by Point Research Corporation of Santa Ana, Calif. The DRM® is configured to enable generation and/or collection of location information within buildings (e.g., a household, the business 12) and in outdoor environments. In general, when used outdoors, the DRM® may be configured to enable theSPSR 146 to use GPS technology to collect and/or generate location information. When used indoors, the DRM® uses, among other components, a compass (e.g., the compass 150) and an accelerometer (e.g., the motion sensor 144) to generate location information. - The
PPM 30 may further include thevisual interface 116, which may be used in combination with theinput interface 114 to enter and retrieve information from thePPM 30. For example, thevisual interface 116 may be implemented using a liquid crystal display (LCD) that, for example, displays detailed status information, location information, configuration information, calibration information, etc. Thevisual interface 116 may display an interface for the local web-based information application and allow the monitored person to view search results from queries submitted via the application. - The timer/
counter 118 may be used to generate timer events that are communicated to theprocessor 100. Timer events may be used to, for example, wake-up thePPM 30 from a shut-down state, powered-down state, a power-saving mode state, etc. The timer/counter 118 may be configured to generate a timing event after a particular amount of time has elapsed or at a particular time of day. The amount of time or time of day may be set by, for example, configuring registers in the timer/counter 118. The timer/counter 118 may include a real-time clock or other time-tracking mechanism to generate timestamps that can be stored in association with location tracking data and query events indicative of queries submitted by users via the location-based web service application as discussed below. - The
PPM 30 may be integrated with other functions such as a wireless phone that uses the voice coder/decoder 102 to code and decode voice signals and theRF transceiver 134 to send the voice signals over a wireless network for phone calls. Likewise, theprocessor 100 may run an Internet browser or other applications for use by the monitored person using theinput interface 114 and thevisual interface 116. It is to be understood that the components inFIG. 2 may be hardware, software and/or firmware and could, for example, be loaded or otherwise integrated into existing PDA's or wireless phones with existing components to perform the above-described functions. - The media monitoring information collected by the PPM's in the geographic area 10 (e.g., by the PPM 30) may be processed by the
central facility 60 at a later time. Thecentral facility 60 stores location data from the PPM's, as well as usage data from the location-based web application on thePPM 30. As discussed earlier, thecentral facility 60 may also monitor and store broadcast information, such as audio codes/signatures from radio and/or television programs. - The
PPM 30 may be configured to substantially continuously generate, obtain, and/or collect media monitoring information, location information, and motion information. As described above, thePPM 30 may include one or moremedia monitoring sensors 108 used to detect media and to generate or collect media monitoring information or media-related data based on, for example, audio signals, visual signals, RF signals, infrared (IR) signals, ultrasonic signals, etc. In addition, thePPM 30 may include one or more location or positioning devices that enable thePPM 30 to collect location or position information from one or more location andmotions sensors 110 and corresponding systems, and/or to send the collected location information to one or more location information systems. The examplegeographic area 10 includes one or more location information systems that may be used to communicate/receive location information to/from thePPM 30. - The
PPM 30 may collect/generate and store media monitoring information (e.g., audience measurement codes (e.g., codes inserted to identify media, sometimes referred to as “ancillary codes”), signatures, etc.) associated with any media (e.g., video, audio, movies, music, still pictures, advertising, etc.) to which the monitoredperson 32 is exposed. For example, thePPM 30 may be configured to obtain codes (e.g., audio codes), generate or collect signatures, etc. that may be used to identify video programs (e.g., DVD movies, television programming, etc.), audio programs (e.g., CD audio, radio programming, etc.), and/or any other media. Using one or more media detection devices described above in connection withFIG. 2 , thePPM 30 may collect media monitoring information associated with presented or delivered media to which the monitoredperson 32 may be exposed. - Additionally, the
PPM 30 may be configured to receive codes (e.g., audio codes and/or RF codes) associated with other forms of media such as, for example, billboards or any other form of publicly viewable advertising or media. For example, each billboard (e.g., the billboard 20) may include an audio broadcasting device and/or an RF broadcasting device such as, for example, thetransceiver 22 ofFIG. 1 , configured to emit a billboard code that uniquely identifies that billboard. If thePPM 30 is proximate to a billboard, thePPM 30 may obtain the billboard code as media monitoring information, thereby indicating that the monitoredperson 32 was exposed to the billboard. In addition, thePPM 30 may be configured to obtain direction information via, for example, thecompass 150, and log the direction in which the monitoredperson 32 is facing or traveling so that subsequent data analyses may determine if the monitoredperson 32 was likely facing the billboard. - The
RF transceiver tower 42 may be used in combination with any RF communication technology such as, for example, a cellular or mobile communication technology (e.g., GSM, CDMA, TDMA, AMPS, etc.). In some example configurations, theRF transceiver tower 42 may be configured to transmit or broadcast position information and/or any type of signal that may be used by thePPM 30 to generate location information. For example, theRF transceiver tower 42 may transmit information having geographic location information and time codes. More specifically, theRF transceiver tower 42 may be associated with a particular or unique set of geographic location coordinates (i.e., geographic location information), that define or indicate the location of theRF transceiver tower 42 within a global positioning grid. The time codes may be associated with a time at which a particular signal is transmitted by theRF transceiver tower 42. - The geographic location information and the time codes received from a plurality of RF transceiver towers may be used by the
PPM 30 to perform triangulation processes to determine the location(s) of thePPM 30. Although theRF transceiver tower 42 is depicted as being located in an outdoor environment, thePPM 30 may include location technologies that communicate with theRF transceiver tower 42 when thePPM 30 is located within indoor environments (e.g., within the business 12) and/or outdoor environments. - The
positioning satellite 44 may also be used to communicate location information to thePPM 30. For example, thepositioning satellite 44 may be used to implement any satellite positioning system (SPS) such as, for example, the global positioning system (GPS) that continuously broadcasts position-related information. In this manner, thePPM 30 may receive the position-related information from thesatellite 44 to determine movement information associated with the location(s) of thePPM 30. -
FIG. 3 is a block diagram of anexample apparatus 160 to implement the location data collection and web event data collection of theexample PPM 30 ofFIGS. 1 and 2 . Theapparatus 160 may be implemented using, for example, logic and/or other circuitry in communication or integral with themedia monitoring sensors 108 and location andmotion sensors 110 described above in connection withFIG. 2 , and/or may be implemented using software and/or firmware executed by theprocessor 100 ofFIG. 2 . Theapparatus 160 includes a web-basedinformation application controller 162, alocation data collector 164, a webevent data collector 166, a mediacapture data collector 168, and a consumerpurchase data collector 170. The web-basedinformation application controller 162 is coupled to theinput interface 114, thevisual interface 116, and thecommunication interface 106. In this illustrated example, the web-basedapplication controller 162 and thelocation data collector 164 are used to implement a location-based web services application. A location-based web services application enables a user of thePPM 30 to submit queries requesting information about products, services, retail establishments, etc., and the application communicates the requests along with corresponding location information indicative of the location at which the PPM 30 (and, thus, the monitored person 32) was located when the monitoredperson 32 submitted the query. - In the illustrated example, the web-based
information application controller 162 presents a search window on thevisual interface 116 that allows the monitoredperson 32 to enter search requests or queries including one or more query criteria (e.g., product search term(s), services search term(s), retail establishment search term(s), etc.) and/or location information such as an address, GPS coordinates, a zip code, area code, etc. The web-basedinformation application controller 162 may be used to request information about a product or service including descriptive information or retail establishment names and/or addresses thereof of where the product or service is sold. Additionally, the web-basedinformation application controller 162 may be used to request addresses of particular retail establishments nearest a location of the monitoredperson 32. In some example implementations, search terms or criteria provided by the monitored person may include bar code identification codes or RFID identification codes scanned by the monitoredperson 32 using thebar code reader 136 or theRF transceiver 134 ofFIG. 2 . For example, theperson 32 may see a product and scan its bar code ID or RFID to request information. - The web-based
information application controller 162 transmits requests or queries via thecommunication interface 106 to theweb server 50 ofFIG. 1 . Theweb server 50 returns information responsive to the search request in, for example, a hypertext markup language (html) file and/or an extensible markup language (XML) file to thecommunication interface 106. In the illustrated example, the web-basedinformation application controller 162 tailors answers to search requests based on the monitored person's current location. For example, if the monitoredperson 32 makes a query for restaurants, the web-basedinformation application controller 162 prioritizes results in the immediate geographic area of the monitoredperson 32. The local web-basedinformation application controller 162 may then display the results via thevisual interface 116. Additionally or alternatively, theweb server 50 may filter, arrange, and/or return search results based on the location of the monitoredperson 32. - The
location data collector 164 is coupled to the location andmotion sensors 110, the timer/counter 118, and thememory 104. Thememory 104 stores a location data logfile 180. Thelocation data collector 164 collects/generates location information and stores an identification code for thePPM 30 and the location information along with corresponding timestamps in the location data logfile 180. - The web
event data collector 166 is coupled to the web-basedinformation application controller 162 and the timer/counter 118. The webevent data collector 166 records or tracks the use of the location-based web services application as well as results obtained through searches. The webevent data collector 166 stores an identification code for thePPM 30, the web event data, and a corresponding timestamp from the timer/counter 118 in a web event data logfile 182 stored in thememory 104. In the illustrated example, thelocation data collector 164 retrieves the data stored in the location data logfile 180, the webevent data collector 166 retrieves the data stored in the web event data logfile 182, and thedata collectors communication interface 106 to thecentral facility 60. - In the illustrated example, the
media data collector 168 is coupled to themedia monitoring sensors 108, the location andmotion sensors 110, the timer/counter 118, and thememory 104. Thememory 104 stores a mediadata log file 184. In the illustrated example, after one or more of themedia monitoring sensors 108 detects a media signal, themedia data collector 168 can generate a signature and/or extract a code from the detected media signal. Themedia data collector 168 can then store the media code and/or signature in the mediadata log file 184. Themedia data collector 168 can be configured to periodically or aperiodically communicate the data in the mediadata log file 184 via thecommunication interface 106 to thecentral facility 60. - In the illustrated example, the consumer
purchase data collector 170 is coupled to the location andmotion sensors 110, the timer/counter 118, and thememory 104. Thememory 104 stores a purchase data logfile 186. In the illustrated example, theRF transceiver 134 and/or thebar code reader 136 can be configured to read product identifiers, service identifiers, and/or retail establishment identifier(s) and communicate the identifier(s) to the consumerpurchase data collector 170. The consumerpurchase data collector 170 can then store the identifier(s) in the purchase data logfile 186 in association with corresponding timestamp(s) indicative of when purchase(s) were made and corresponding location information indicative of the location(s) at which the purchase(s) were made. -
FIG. 4 is a block diagram of anexample apparatus 200 that may be used to collect location and media data (e.g., advertising data) from thePPM 30, other data devices, and theserver 70 ofFIG. 1 and analyze the collected data. Theapparatus 200 may be implemented using, for example, logic and/or other circuitry in communication with or integral to theserver 70, or may be implemented using software and/or firmware executed by theserver 70. Theapparatus 200 is communicatively coupled to thedatabase 72 and theanalysis server 74 described above in connection withFIG. 1 . In some example implementations, theanalysis server 74 may be the same server as theserver 70. - In the illustrated example, the
example apparatus 200 includes areceiver 202, adata fault detector 204, adata file interface 206, adata analyzer 208, a geo-codedadvertisement database 210, and a reference media codes/signatures database 211. Thereceiver 202 is coupled to a communications interface of theserver 70 to receive data from log files (e.g., the data log files 180, 182, 184, and 186 ofFIG. 3 ) of PPM's (e.g., the PPM 30). Thereceiver 202 is configured to perform initial processing on the received data and to make the data available to thedata fault detector 204. Thedata fault detector 204 performs one or more processes described below to determine the validity of the data entries from the data log files 180, 182, 184, and 186. Thedata file interface 206 creates files and stores/retrieves data in the files to facilitate data analysis by thedata analyzer 208. - In the illustrated example, the
data analyzer 208 is coupled to the geo-codedadvertisement database 210, which is configured to store advertisement identifiers in association with respective location identifiers. The advertisement identifiers are indicative of or identify advertisements placed at geographic locations, and the location identifiers are indicative of the locations at which those advertisements are placed. The data analyzer 208 is configured to determine associations or correlations between queries or search requests, advertisements, retail establishments, and purchase data based on respective location information and timestamps. For example, thedata analyzer 208 may retrieve a location identifier associated with a query from a data file created by thedata file interface 206 and also retrieve advertisement and location identifiers from the geo-codedadvertisement database 210 associated with advertisements to determine the advertisements to which a user (e.g., the monitoredperson 32 ofFIG. 1 ) was proximately located when the monitoredperson 32 submitted the query or sometime before the monitoredperson 32 submitted the query. Theanalyzer 208 can also determine, based on search terms of the query, which advertisements are associated with the query and credit those advertisements as having been exposed to the monitoredperson 32 and/or credit the advertisements to indicate their effectiveness in influencing the user to request information about the advertised products, services, retail establishments, etc. In addition, theanalyzer 208 can analyze path of travel information associated with the monitoredperson 32 based on received location information to determine whether the monitoredperson 32 visited any retail establishments, and to credit certain advertisements and/or query/search results as having effectively influenced the monitoredperson 32 to visit such retail establishments related to those advertisements and/or query/search results. In some example implementations, an advertisement and/or a query/search result is deemed to be related to a visited retail establishment if the advertisement or query/search result advertises or provides information about the retail establishment or a product offered by the retail establishment and, in some instances, if the advertised establishment was subsequently visited. - To determine associations or correlations between purchases and advertisement exposures and/or query/search results, the
data analyzer 208 can analyze received purchase data indicative of purchases within a particular time frame of a user-submitted query or search request. If thedata analyzer 208 determines that a particular purchase is related to an exposure to an advertisement or a query/search result, the data analyzer 208 credits the advertisement and/or the query/search result as having effectively influenced the monitoredperson 32 to make the purchase. - The reference media codes/
signatures database 211 is configured to store advertisement identifiers in association with respective media representation information such as codes or signatures that are known to be associated with, correspond to, or that otherwise identify those advertisements. For example, the reference media codes/signatures database 211 can store reference audio codes or signatures that identify respective audio advertisements, reference video codes, or signatures that identify respective video advertisements, and/or RF codes or signatures that identify respective advertisements (e.g., thebillboard 20 ofFIG. 1 ) having RF transmitters (e.g., theRF transmitter 22 ofFIG. 1 ) that emit codes or unique RF signals. The data analyzer 208 can compare codes or signatures collected by the PPM's 30, 34, and 36 (FIG. 1 ) to the known codes or signatures in the reference media codes/signatures database 211 to determine audio, video, or other stationary advertisements to which the monitoredpersons data analyzer 208 can use the advertisement identifier information in the reference media codes/signatures database 211 in connection with the geo-codedadvertisement database 210 to determine the locations at which the advertisements were presented. - In the illustrated example, the
data analyzer 208 can retrieve information from thedatabase 72 to perform analyses and can store analysis results in thedatabase 72 for subsequent retrieval by a metering entity or a business interested in receiving the analysis results. In the illustrated example, thedatabase 72 includes a storefront and product geo-codedknowledgebase 212 and aconsumer behavior knowledgebase 214. The storefront and product geo-codedknowledgebase 212 stores retail establishment identifiers and product/service identifiers in association with respective location identifiers indicative of the locations of those retail establishments and products/services. In some example implementations, thedata analyzer 208 can retrieve the associated identifiers from the storefront and product geo-codedknowledgebase 212 to determine whether a user visited a particular retail establishment and/or purchased a product or service at a particular retail establishment. The storefront and product geo-codedknowledgebase 212 can be setup and configured by a metering entity (e.g., a metering business implementing the example methods and apparatus described herein) upon initial system setup to associate location identifiers with respective retail establishments and/or products/services. Theknowledgebase 212 is maintained thereafter to keep location identifier associations up to date. In some example implementations, the storefront and product geo-codedknowledgebase 212 is updated based on data collected by thePPM 30. For example, purchase data stored by thePPM 30 in association with location information may include a retail establishment name or identifier that the storefront and product geo-codedknowledgebase 212 can use to update location identifier associations and/or add new location identifier associations. - During or after some or all types of analyses, the
data analyzer 208 can store behavior-related analysis results in theconsumer behavior knowledgebase 214 to create data representative of persons' behaviors related to advertisements and query results. The behavior-related data stored in theconsumer behavior knowledgebase 214 can be used to extrapolate buying trends, purchasing psychology, assess how influential certain query search results are on people, etc. Product manufacturers, retail establishments, service providers, advertisers or any other interested entity can use theconsumer behavior knowledgebase 214 to determine how to better reach their target markets or implement more effective advertising campaigns. -
FIGS. 5A , 5B, 6-9, 10A, 10B, 11A, 11B, and 12-16 are flow diagrams representative of example processes that may be executed to implement the example methods, apparatus, and systems described herein. In some example implementations, the example methods ofFIGS. 5A , 5B, 6-9, 10A, 10B, 11A, 11B, and 12-16 may be wholly or partially implemented using machine readable instructions comprising a program for execution by a processor (e.g., theprocessor 100 ofFIG. 2 and/or theprocessor 1712 ofFIG. 17 ). The programs may be embodied in software stored on a tangible medium such as a CD-ROM, a floppy disk, a hard drive, a digital versatile disk (DVD), or a memory associated with theprocessor 100 and/or theprocessor 1712 and/or embodied in firmware and/or dedicated hardware in a well-known manner. Further, although the example programs are described with reference to the flow diagrams illustrated inFIGS. 5A , 5B, 6-9, 10A, 10B, 11A, 11B, and 12-16, persons of ordinary skill in the art will readily appreciate that many other methods of implementing the example methods, apparatus, and systems described herein may alternatively be used. For example, the order of execution of the blocks may be changed, and/or some of the blocks described may be changed, eliminated, or combined. -
FIGS. 5A and 5B depict a flow diagram of an example process that may be performed by thePPM 30 ofFIGS. 1-3 to collect data using theexample apparatus 160 ofFIG. 3 . Initially, theexample apparatus 160 generates and stores the data logfiles FIG. 3 (block 502) in thememory 104. The location data collector 164 (FIG. 3 ) then determines whether a location identifier (e.g., location coordinates or other location information indicative of a location) has been received (block 504) from, for example, the location andmotion sensors 110. If a location identifier has been received (block 504), thelocation data collector 164 stores the location identifier in association with a corresponding timestamp in a log entry or record in the location data log file 180 ofFIG. 3 (block 506). In the illustrated example, thelocation data collector 164 may create a timestamp using a time value read from the timer/counter 118 ofFIG. 2 . - After the
location data collector 164 stores the location identifier (block 506) or if thelocation data collector 164 has not received a location identifier (block 504), the web event data collector 166 (FIG. 3 ) determines whether any queries or search requests have been submitted by the monitoredperson 32 via the location-based web services application (block 508). If a query has been submitted (block 508), the webevent data collector 166 stores the query string search criteria (e.g., the user-provided search terms) in association with the search results of the query (received from theweb server 50 and the web information application controller 162), a corresponding timestamp, and a corresponding location identifier (block 510). - After the web
event data collector 166 stores the query string search criteria and associated information (block 510) or if the webevent data collector 166 determines that a query has not been submitted (block 508), the media capture data collector 168 (FIG. 3 ) determines whether a media signal (e.g., an audio signal, a video signal, an RF signal, etc.) has been captured (block 512). For example, the media signal may be an audio signal associated with an advertisement presented by theaudio device 16 or the video device 18 (FIG. 1 ), a video signal presented by the video device 18 (FIG. 1 ), or an RF signal emitted by theRF transceiver 22 of the billboard 20 (FIG. 1 ). - The media
capture data collector 168 then determines whether the captured media signal includes a code (block 514). If the captured media signal includes a code, the mediacapture data collector 168 extracts (or creates a copy of) the code (block 516). If the captured media signal does not include a code (block 514), the mediacapture data collector 168 generates a signature of the captured media signal (block 518). Alternatively, a signature can always be collected regardless of whether a code was collected. After the mediacapture data collector 168 extracts a code (block 516) and/or generates a signature (block 518), the mediacapture data collector 168 stores the media representation information (e.g., the code and/or the signature) (block 520) in the media data log file 184 (FIG. 3 ). - After the media
capture data collector 168 stores the media representation information (block 520) or if the mediacapture data collector 168 determines that a media signal has not been captured (block 512), the consumerpurchase data collector 170 determines whether any input data relating to potential purchases have been received (block 522) (FIG. 5B ). In the illustrated example, the potential purchase data is data indicative of a product or a service such as, for example, bar code information read using the bar code reader 136 (FIG. 2 ) or RFID information received via the RF transceiver 134 (FIG. 2 ) in response to the monitoredperson 32 scanning a product or a service document. If the consumerpurchase data collector 170 determines that potential purchase data has been received (block 522), the consumerpurchase data collector 170 determines whether the monitoredperson 32 purchased the product or service corresponding to the received potential purchase data (block 524). For example, the consumerpurchase data collector 170 may receive subsequent information or the potential purchase information received atblock 522 may have a corresponding purchase confirmation flag indicating that the monitoredperson 32 purchased the related product or service. If the consumerpurchase data collector 170 determines that the monitoredperson 32 made the purchase (block 524), the consumerpurchase data collector 170 stores the purchase information (block 526) in association with a corresponding timestamp and location identifier in the purchase data log file 186 (FIG. 3 ). - The
example apparatus 160 then determines whether it should communicate the data from the data log files 180, 182, 184 and/or 186 to thecentral facility 60 ofFIG. 1 (block 528). If theexample apparatus 160 determines that it should communicate the data to thecentral facility 60, thelocation data collector 164, the webevent data collector 166, the mediacapture data collector 168, and/or thepurchase data collector 170 transmit the data from their respective log files 180, 182, 184, and/or 186 to the central facility 60 (block 530). After theexample apparatus 160 communicates the data to the central facility 60 (block 530) or if theexample apparatus 160 determines that it should not communicate the data to the central facility 60 (block 528), theexample apparatus 160 determines whether it should continue to the monitor (block 532) for additional received information. If theexample apparatus 160 determines that it should continue to monitor (block 532), control returns to block 502 (FIG. 5A ). Otherwise, the process ofFIGS. 5A and 5B ends. - In some example implementation, the
PPM 30 is configured (e.g., provided with diagnostic software routines or diagnostic hardware) to periodically and/or aperiodically perform hardware and/or software diagnostic routines to ensure that the hardware (e.g., themedia monitoring sensors 108, the location andmotion sensors 110, the timer/counter 118, thevoice codec 102, thememory 104, etc. ofFIG. 2 ) and/or software of thePPM 30 are operating properly and/or within acceptable tolerances. If resulting diagnostic information indicates that thePPM 30 is not working properly or within acceptable tolerances, thePPM 30 may communicate the results to the central office 60 (FIG. 1 ), and/or thePPM 30 and/or thecentral office 60 may inform the monitoredperson 32 to return thePPM 30 for repair or exchange. - The
PPM 30 may also be configured to calibrate itself. For example, thePPM 30 may be configured to calibrate individual and/or all components of the PPM 30 (e.g., perform sensor calibrations on some or all of themedia monitoring sensors 108 and/or the location andmotion sensors 110 ofFIG. 2 ). In this manner, thePPM 30 may perform a calibration routine prior to being given to a monitored person (e.g., the monitoredperson 32 ofFIG. 1 ). Additionally or alternatively, thePPM 30 may perform the calibration routine in response to any suspect diagnostic information resulting from the periodic diagnostic routines. If calibration routines fail to make thePPM 30 operate properly or within acceptable tolerances, thePPM 30 may communicate a message to thecentral facility 60 indicating the failure, and/or thePPM 30 and/or thecentral office 60 may inform the monitoredperson 32 to return thePPM 30 for repair or exchange. -
FIG. 6 is a flow diagram of an example analysis process that may be performed by theservers 70 and 74 (FIGS. 1 and 4 ) and/or the example apparatus 200 (FIG. 4 ) to analyze data collected by theexample PPM 30 ofFIGS. 1-3 . Initially, theserver 70 establishes communications with the PPM 30 (block 602), which may be initiated by thePPM 30 via, for example, an alert message that theserver 70 can use to obtain and store the identification of thePPM 30. For example, the alert message may be sent by thePPM 30 atblock 530 ofFIG. 5B . The receiver 202 (FIG. 4 ) then receives the PPM-collected data from the PPM 30 (block 604). In the illustrated example, the PPM-collected data includes data from the location data logfile 180, the web event data logfile 182, the mediadata log file 184, and/or the consumer purchase data logfile 186. The data fault detector 204 (FIG. 4 ) then performs a validation analysis of the received data (block 606) to determine whether any of the received data is invalid or whether any data is missing. Example validation processes that may be used to implement the validation analysis ofblock 606 are described below in connection withFIGS. 9 , 10B, 11B, 12, 13, and 14. The data file interface 206 (FIG. 4 ) then stores indicators or tags or other information in association with the received data to indicate valid data and any faults in the data (block 608). In the illustrated example, thedata file interface 206 stores the valid data in a valid meter log data structure 610 (e.g., a file, a database, a table, etc.) that is used to subsequently perform anadvertisement exposure analysis 612, aquery correlation analysis 614, and a purchase correlation analysis 616. The valid meterlog data structure 610 may be stored in thedatabase 72 ofFIGS. 1 and 4 . - During the
advertisement exposure analysis 612, the data analyzer 208 (FIG. 4 ) determines whether the valid meterlog data structure 610 includes any audio/video/RF media representation information (block 618) such as, for example, audio/video/RF codes or signatures collected in connection withblocks FIG. 5A . If thedata analyzer 208 determines that the validlog data structure 610 includes one or more audio/video/RF media representation information (block 618), thedata analyzer 208 analyzes the advertisement exposure based on the audio/video/RF representation information (block 620). An example implementation of the advertisement exposure analysis of the audio/video/RF media representation information is described below in connection with the example process ofFIG. 7 . - After the
data analyzer 208 analyzes the advertisement exposure based on audio/video/RF representation information (block 620) or if the data analyzer 208 determined that the valid meterlog data structure 610 does not include any audio/video/RF media representation information (block 618), thedata analyzer 208 analyzes advertisement exposure based on location information (block 622) in the valid meterlog data structure 610 indicative of the locations at which thePPM 30, and thus, the monitoredperson 32, were located. For example, for each valid location identifier, thedata analyzer 208 can determine if that location is sufficiently proximate to an advertisement at a fixed or stationary location such that the monitoredperson 32 would have been exposed to the advertisement so that the monitoredperson 32 could be influenced by the advertisement to perform some action (e.g., request information, purchase a product/service, visit an advertised retail establishment, etc.) related to the advertisement. An example implementation of the advertisement exposure analysis based on location information is described below in connection with the example process ofFIG. 7 . In the illustrated example, thedata file interface 206 stores information indicative of advertisements to which the monitoredperson 32 was exposed in an advertisement exposure data structure 624 (e.g., a file, a database, a table, etc.). - During the
query correlation analysis 614, thedata analyzer 208 correlates or associates instances of advertisement exposure indicated in the advertisementexposure data structure 624 and/or visits to retail establishments with query-related information (e.g., user-submitted queries and/or query results) (block 626). In the illustrated example, the query-related information includes the user-submitted query information (e.g., query search strings, search terms, search criteria, etc.) and the query results stored by the web event data collector 166 (FIG. 3 ) atblock 510 ofFIG. 5A . The data analyzer 208 may retrieve the query-related information from the valid meterlog data structure 610. Atblock 626, thedata analyzer 208 may associate an instance of an advertisement exposure and/or a user's visit to a retail establishment with one or more user-submitted queries and the query search results when the queries and the query results are related to or associated with the product or service advertised in the advertisement. In the illustrated example, thedata file interface 206 stores flags, indicators, or other information indicating the association between instances of advertisement exposures, queries/query results, and retail establishment visits in an advertisement exposure, queries, and store visits mappingdata structure 628. An example process that may be used to implement thequery correlation analysis 614 is described below in connection withFIG. 8 . - During the purchase correlation analysis 616, the
data analyzer 208 determines which of the query results are related to purchases (block 628) made by, for example, the monitored person 32 (FIG. 1 ). For example, thedata analyzer 208 may determine that one or more query results are related to one or more purchases if the query results contain information related to or associated with one or more product or service purchases. The data analyzer 208 can then credit each query result identified inblock 628 as having influenced one or more purchase decisions (block 630) made by, for example, the monitoredperson 32. In the illustrated example, thedata analyzer 208 can store the information generated atblock 630 in the consumer behavior knowledgebase 214 (FIG. 4 ) to create behavior information indicative of how consumers react to particular information (e.g., query search results) and/or advertisements. The example process ofFIG. 6 then ends. -
FIG. 7 depicts a flow diagram of an example process that may be used to implement the advertisement exposure analyses ofblocks FIG. 6 . In the below-description, the location-basedadvertisement exposure analysis 622 is described first followed by a description of the audio/video/RF-basedadvertisement exposure analysis 620. Initially, the receiver 202 (FIG. 4 ) retrieves the PPM-collected location data (block 702) from, for example, the valid log meter data structure 610 (FIG. 6 ). The data analyzer 208 then retrieves a location event record (block 704) and determines a nearest advertisement geo-fence (block 706) based on advertisement location identifiers stored in geo-coded advertisement database 210 (FIG. 4 ). In the illustrated example, a geo-fence (i.e., a geographical boundary) is defined by a maximum distance partially or wholly surrounding an advertisement at which a person (e.g., the monitored person 32) is deemed to be able to perceive or be exposed to an advertisement such that the advertisement can have some influence on the person to perform some action (e.g., request information, purchase a product/service, visit an advertised retail establishment, etc.) related to the advertisement. To determine a geo-fence for an advertisement, thedata analyzer 208 may determine an area (e.g., a radial area, a pie shaped area fanning out from the advertisement location, or any other shaped area) surrounding, partially surrounding, and/or adjacent to the location of each advertisement. In some example implementations, thedata analyzer 208 may determine that a person was exposed to an advertisement if the person was within a particular distance from the advertisement and facing a particular direction or within a range of directions (e.g., thedata analyzer 208 may use direction information generated by thePPM 30 using thecompass 150 ofFIG. 2 ). - The data analyzer 208 then determines whether the location event information retrieved at
block 704 is indicative of a location inside the geo-fence (block 708). If the location is inside the geo-fence (block 708), the data analyzer 208 credits the advertisement corresponding to the geo-fence as having been exposed to the monitored person 32 (block 710). In the illustrated example, the data analyzer 208 credits the advertisement by storing a flag, an indicator, or some other information indicative of exposure credit in the advertisement exposure data structure 624 (FIG. 6 ) in association with the advertisement identifier. After the data analyzer 208 credits the advertisement (block 710) or if thedata analyzer 208 determines that the location event information is not indicative of a location within the geo-fence (block 708), thedata analyzer 208 determines whether another location event record remains to be analyzed (block 712). If at least another location event record remains to be analyzed (block 712), control returns to block 704. - If no other location event records remain to be analyzed (block 712), the
receiver 202 retrieves PPM-collected media representation information (e.g., audio/video/RF codes or signatures) (block 714) from, for example, the valid meter log data structure 610 (FIG. 6 ). The data analyzer 208 then retrieves a media code or signature (block 716) from the retrieved PPM-collected media representation information to perform the audio/video/RF-basedadvertisement exposure analysis 620. The data analyzer 208 then determines whether any reference media codes or signatures match the retrieved media code or signature (block 718). For example, thedata analyzer 208 may compare the retrieved media code or signature with reference media codes or signatures stored in the reference media codes/signatures database 211 ofFIG. 4 . - If the
data analyzer 208 determines that a reference media code or signature matches the retrieved media code or signature (block 718), the data analyzer credits the advertisement associated with the reference media code or signature as having been exposed to the monitored person 32 (block 720). In the illustrated example, the data analyzer 208 credits the advertisement by storing a flag, an indicator, or some other information indicative of exposure credit in the advertisement exposure data structure 624 (FIG. 6 ) in association with the advertisement identifier. After the data analyzer 208 credits the advertisement (block 720) or if thedata analyzer 208 determines that no reference media codes or signatures match the retrieved media code or signature (block 718), thedata analyzer 208 determines whether another media code or signature remains to be analyzed (block 722). If at least another media code or signature remains to be analyzed (block 722), control returns to block 716. Otherwise, the example process ofFIG. 7 ends. -
FIG. 8 depicts a flow diagram of an example process that may be used to implement thequery correlation analysis 612 ofFIG. 6 . Initially, the receiver 202 (FIG. 4 ) retrieves the PPM-collected location data (block 802) from, for example, the valid log meter data structure 610 (FIG. 6 ). The data analyzer 208 then retrieves a location event record timestamped within the previous (N) days (block 804). In the illustrated example, the previous (N) days specifies a recent history within which exposure to web event data (e.g., query search results) and/or advertisements could have some causal effect on a person's actions such as, for example, purchasing a product, purchasing a service, visiting a retail establishment, etc. For example, the previous (N) days can specify the maximum time that can lapse between a monitored person submitting a query or being exposed to an advertisement and the person performing some action (e.g., visit a retail establishment, purchase a product/service, etc.) related to the query search results or that advertisement so that the query search results or advertisement can be credited as having influenced the monitored person to perform the action. The number of days (N) can be determined by a metering entity implementing the example methods and apparatus described herein. For example, the number of days (N) can be determined based on a person's typical memory retention time of previously observed objects. In some example implementations, the amount of lapsed time may be a number of hours instead of a number of days. - The data analyzer 208 then determines whether the retrieved location event information specifies a location indicative of the monitored
person 32 having visited a retail establishment (block 806). In the illustrated example, thedata analyzer 208 can compare the retrieved location event information to location information stored in the storefront and product geo-codedknowledgebase 212 ofFIG. 4 to determine whether the retrieved location event information corresponds to a location of a retail establishment. If the retrieved location event information is indicative of a visitation to a retail establishment, the data analyzer 208 stores a tag, a flag, or some other information in connection with the retail establishment identifier to indicate that the retail establishment was visited by the monitored person 32 (block 808). In the illustrated example, the data analyzer 208 stores the tagged or flagged retail establishment identifier in a visited retailestablishment data structure 810 and/or the advertisement exposure, queries, and retail establishment visits mappingdata structure 628 ofFIG. 6 . After tagging or flagging the retail establishment identifier (block 808) or if thedata analyzer 208 determines that the retrieved location identifier is not indicative of a retail establishment visitation (block 806), thedata analyzer 208 determines whether another location event record timestamped within the previous (N) days remains to be analyzed (block 812). If another location event record remains (block 812), control is passed back to block 804. - If the
data analyzer 208 determines that no other location event record remains to be analyzed (block 812), thedata analyzer 208 retrieves advertisement identifiers of advertisements to which the monitoredperson 32 was exposed within the previous (N) days (block 814) and query results received by thePPM 30 within the previous (N) days (block 816). In the illustrated example, thedata analyzer 208 retrieves the exposed to advertisement identifiers and the query results from the valid meter log data structure 610 (FIG. 6 ). The data analyzer 208 then retrieves a query result record (block 818) from the query results retrieved atblock 816 and determines whether the query result is associated with one or more advertisement exposures (block 820). For example, thedata analyzer 208 may compare the query result information with advertisements indicated in theadvertisement exposure data 624 ofFIG. 6 to determine whether the query result information is related to or associated with (e.g., the query result includes information about a product, service, or retail establishment advertised by the advertisement) any of the advertisements to which the monitored person was exposed. If thedata analyzer 208 determines that the retrieved query result is associated with one or more advertisement exposures, the data analyzer 208 stores a tag, a flag, or some other information in association with the advertisement exposure information to indicate that the identified advertisements influenced the monitoredperson 32 to submit the query associated with the query results (block 822). In some example, implementations, thedata analyzer 208 may alternatively or additionally compare query search terms or search criteria submitted by the monitoredperson 32 to the advertisements indicated in theadvertisement exposure data 624 to determine whether any of the advertisements influenced the monitoredperson 32 to submit the query. - After the data analyzer 208 stores a tag, a flag, or some other information in association with the advertisement exposure information (block 822) or if the
data analyzer 208 determines that the retrieved query result is not related to or associated with any advertisement exposures (block 820), thedata analyzer 208 determines whether the query result information is associated with or related to one or more retail establishments visited by the monitored person 32 (block 824). For example, thedata analyzer 208 can compare the query result information with visited retail establishment information stored in the visited retailestablishment data structure 810 to determine whether any information associated with the retail establishments (e.g., name, street address, products offered, services offered, etc.) match or substantially match the query result information. If thedata analyzer 208 determines that the query result information is associated with or related to one or more visited retail establishments (block 824), the data analyzer 208 stores a tag, a flag, or some other information in association with the query result to indicate that the query result influenced the monitoredperson 32 to visit a retail establishment (block 826). In the illustrated example, thedata analyzer 208 can store the tag, flag, or other information in association with the query result in the advertisement exposure, queries, and retail establishment visits mappingdata structure 628 ofFIG. 6 . - After the data analyzer 208 stores a tag, a flag, or some other information in association with the query result (block 826) or if the
data analyzer 208 determines that the retrieved query result is not related to or associated with any visited retail establishments (block 824), thedata analyzer 208 determines whether another query result received by the user within the previous (N) days remains to be analyzed (block 828). If thedata analyzer 208 determines that at least another query result remains to be analyzed (block 828), control is passed back to block 818. Otherwise, the example process ofFIG. 8 is ended. -
FIG. 9 is a flow diagram of an example location information validation process that may be performed by the example apparatus 200 (FIG. 4 ). The example process ofFIG. 9 may be used to implement the example validation analysis ofblock 606 ofFIG. 6 . Initially, the data receiver 202 (FIG. 4 ) retrieves a location event record from the data received from the location data log file 180 of the PPM 30 (block 902), and the fault detector 204 (FIG. 4 ) determines whether the latitude coordinate is valid by determining whether the latitude coordinate is within a range between −90 degrees and 90 degrees (block 904). If thefault detector 204 determines that the latitude coordinate is valid (block 904), thefault detector 204 determines whether the longitude coordinate is valid by determining whether the longitude coordinate is within −180 degrees and 180 degrees (block 906). In other example implementations, other geographical coordinate systems having different ranges and/or units may be used. If thefault detector 204 determines that the longitude coordinate is valid (block 906), thedata fault detector 204 returns a valid indicator to indicate that the retrieved location event record is valid (block 908). - If the
fault detector 204 determines that the longitude coordinate is valid (block 906) or that the latitude coordinate is not valid (block 904), thefault detector 204 returns an invalid indicator to indicate that the retrieved location event record is not valid (block 910). Thedata file interface 206 then stores a location information error indicator (block 912) in, for example, the valid meterlog data structure 610 ofFIG. 6 to indicate that the location coordinates were not valid. Thefault detector 204 or thedata file interface 206 then discards the invalid location event record from the location data (block 914). - After discarding the invalid location event record from the location data (block 914) or after returning a valid indicator (block 908), the
fault detector 204 determines whether another location event record remains to be analyzed (block 916). If at least another location event record remains to be analyzed (block 916), control is passed back to block 902. Otherwise, the example process ofFIG. 9 is ended. -
FIG. 10A is a flow diagram for an example heartbeat process that may be performed by theprocessor 100 of thePPM 30 to generate heartbeat information that may subsequently be used to determine the validity of metering data collected by thePPM 30. Initially, the processor 100 (FIG. 2 ) of thePPM 30 instantiates metering software (block 1002) used to collect the web event (e.g., query event), location event, media signal capture event, and/or purchase event information. Theprocessor 100 then waits for a heartbeat timeout (block 1004). The heartbeat timeout is determined by the periodic time at which thePPM 30 generates a heartbeat message to confirm the presence or operation of thePPM 30 in thegeographic area 10. In an example implementation, thePPM 30 may transmit heartbeat messages indicative of the heartbeat timeouts to the central facility 60 (FIG. 1 ) substantially in real time, and thecentral facility 60 may analyze the heartbeat messages substantially in real time or during a post process to confirm that thePPM 30 is operational and/or within thegeographic area 10. Alternatively or additionally, thePPM 30 may store the heartbeat messages in the memory 104 (FIG. 2 ) of thePPM 30. For example, thePPM 30 may store the heartbeat messages in the location data log file 180 (FIG. 3 ) (or in any of the other data log files 182, 184, and 186), and thecentral facility 60 may analyze the heartbeat messages in connection with the location data logfile 180 during a post process. - When the timeout is reached (block 1004), the
processor 100 determines whether it should communicate a heartbeat message indicative of the heartbeat timeout to the central facility 60 (block 1006). For example, theprocessor 100 may check a configuration setting (e.g., a transmit heartbeat message configuration bit) in thememory 104 to determine whether it should transmit the heartbeat message. If theprocessor 100 determines that it should communicate the heartbeat message to the central facility 60 (block 1006), theprocessor 100 transmits the heartbeat message to thecentral facility 60 via the communications interface 106 (block 1008). Otherwise, theprocessor 100 stores the heartbeat message locally (block 1010) in, for example, the location data log file 180 (FIG. 3 ) in thememory 104. After transmitting the heartbeat message to the central facility 60 (block 1008) or after storing the heartbeat message locally (block 1010), theprocessor 100 determines whether it should wait for another heartbeat timeout (block 1012). For example, if the metering software is still instantiated, theprocessor 100 may determine that it should wait for another heartbeat timeout (block 1012) and control is passed back toblock 1004. Otherwise, the example process ofFIG. 10A is ended. -
FIG. 10B is a flow diagram of an example heartbeat analysis process that may be performed by the example apparatus 200 (FIG. 4 ) to examine data log files received from a PPM (e.g., the PPM 30) to determine whether data collected by the PPM is valid. The example process ofFIG. 10B may be used to implement the example validation analysis ofblock 606 ofFIG. 6 . Initially, thedata receiver 202 reads a stored event record in the data received from PPM 30 (block 1020). For example, thedata receiver 202 can read the event record from data received from the location data log file 180 ofFIG. 3 . Thedata fault detector 204 then reads heartbeat information (e.g., a heartbeat message) stored in the retrieved event record (block 1022) and determines whether the corresponding heartbeat occurred within a threshold period of a previous heartbeat (block 1024). The threshold period specifies an allowable time within which a heartbeat must occur to indicate that thePPM 30 is functioning properly. If the heartbeat did not occur within the threshold period (block 1024), thedata fault detector 204 stores a missing heartbeat error event (block 1026) in an error file created by the data file interface 206 (FIG. 4 ). Otherwise, if the heartbeat occurred within the threshold period (block 1024), thedata fault detector 204 determines whether another event record remains to be analyzed (block 1028) and, if so, control is passed back toblock 1020. Otherwise, the example process ofFIG. 10B is ended. -
FIG. 11A is a flow diagram of an example event sequence generation process that may be performed by thedata collectors FIG. 3 ) of thePPM 30 to store sequential event counts in connection with respective event information that can subsequently be used to determine the validity of data collected by thePPM 30. Initially, the data collector determines whether an event has occurred (block 1102). For example, in the case of thelocation data collector 164, an event is the periodic reading or reception of location data such as longitude and latitude coordinates from the location andmotion sensors 110. In the case of theweb data collector 166, the event is any action by the monitored person or results returned from the location-based web services application. - If an event has not occurred, the data collector continues to wait for an event (block 1102). Otherwise, if an event has occurred, the data collector stores the event information (block 1104) in, for example, a respective one of the log files 180, 182, 184, and 186. The data collector then increments an event count (block 1106) and stores the event count in association with the event information (block 1108). If the data collector is to wait for another event (block 1110), control is passed back to
block 1102. Otherwise, the example process ofFIG. 11A is ended. -
FIG. 11B is a flow diagram of an example sequential event count confirmation process that may be performed by the example apparatus 200 (FIG. 4 ) when a data is received from a PPM (e.g., the PPM 30). The example process ofFIG. 11B may be used to implement the example validation analysis ofblock 606 ofFIG. 6 . In the illustrated example, the example sequence confirmation process ofFIG. 11B is used to monitor data integrity of information stored in data log files (e.g., the data log files 180, 182, 184, and 186 ofFIG. 3 ) and to identify any data integrity problems associated with the data log files. For example, the example sequence confirmation process ofFIG. 11B may be used to detect missing data in a data log file (e.g., consecutively stored data records missing a data record therebetween), non-sequential data (e.g., consecutively stored data records that are out of sequence), storage medium errors (e.g., storage disk surface damages), write errors, file system errors, etc. - As shown in
FIG. 11B , thedata receiver 202 initially retrieves an initial event record (block 1112) and then reads a next event record (block 1114) from the data received from thePPM 30 corresponding to a data log file. Thedata fault detector 204 then determines whether the next event record retrieved atblock 1114 is in proper sequence (block 1116) relative to the initial event record retrieved atblock 1112 based on the event counts of the event records. For example, thedata fault detector 204 can compare the event counts stored in connection withblock 1108 ofFIG. 11A in the event records to determine whether they are sequential. If the events are not in proper sequence (block 1116), thedata fault detector 204 stores a sequence error indicator (block 1118) in an error log file via thedata file interface 206. After storing the sequence error indicator (block 1118) or if thedata fault detector 204 determines that the events are sequential (block 1116), thedata fault detector 204 determines whether there is another event record to be analyzed (block 1120). If there is another event record to be analyzed, control is passed back toblock 1114. Otherwise, the example process ofFIG. 11B is ended. -
FIG. 12 is a flow diagram of an example speed detection and checking process which may be performed by the example apparatus 200 (FIG. 4 ) to determine the validity of location data collected by the PPM (e.g., the PPM 30). The example process ofFIG. 12 may be used to implement the example validation analysis ofblock 606 ofFIG. 6 . Initially, thedata receiver 202 increments a read counter by one (block 1202). Thedata receiver 202 then reads two successive location event records from data received from the PPM 30 (block 1204) corresponding to, for example, the location data log file 180 ofFIG. 3 . Thedata fault detector 204 then determines the speed of travel between the two location events (block 1206) by, for example, calculating the distance between the two locations and dividing by the time interval that elapsed between the collection of the two location events. Thedata fault detector 204 then determines whether the speed exceeds a threshold value (block 1208). If the speed exceeds the threshold value, an error is possible because the monitoredperson 32 is indicated as having traveled at an unexpected speed and thedata fault detector 204 stores an error indicator (block 1210) in an error file via thedata file interface 206. After storing the error indicator (block 1210) or if the speed does not exceed the threshold value (block 1208), thedata fault detector 204 determines whether there is another event record remaining to be analyzed (block 1212) and, if so, control is passed back toblock 1202. Otherwise, the example process ofFIG. 12 is ended. -
FIG. 13 is a flow diagram of an example process that may be performed by thePPM 30 to determine whether there is sufficient movement to indicate that thePPM 30 was moved from one location to another. The example process ofFIG. 13 may be implemented in real time by thePPM 30 or as a post process by theexample apparatus 200 ofFIG. 4 . For purposes of discussion, the example process is described below as a post process performed by theexample apparatus 200. Initially, thedata receiver 202 reads current location information (block 1302) received from, for example, the location data log file 180 ofFIG. 3 . Thedata fault detector 204 then determines whether the current location is the same as a previous location read (block 1304). If the locations are the same (block 1304), which indicates no movement, thedata fault detector 204 adds the elapsed duration between the entries to a no-movement duration value (block 1306). Thedata fault detector 204 then compares the no-movement duration value to a duration threshold to determine whether the no-movement duration is greater than the duration threshold (block 1308). If the no-movement duration is greater than the duration threshold, it is likely that thePPM 30 has not been moved for an excessive amount of time, which may indicate an error condition such as the monitoredperson 32 leaving thePPM 30 somewhere or the PPM is not functioning properly. If the no-movement duration value exceeds the time threshold (block 1308), thedata fault detector 204 stores a no-movement event (block 1310) in an error file via thedata file interface 206. After storing the no-movement event (block 1310) or if thedata fault detector 204 determines that the previous and current locations are not the same (block 1304), thedata fault detector 204 resets the no-movement duration value (block 1312) and determines whether it should continue processing the location information (block 1314). If thedata fault detector 204 is to continue processing the location information (block 1314) or if thedata fault detector 204 determines that the no-movement threshold is not greater than the time threshold (block 1308), control is passed back toblock 1302. Otherwise, if thedata fault detector 204 is not to continue processing, the example process ofFIG. 13 is ended. -
FIG. 14 is a flow diagram of an example process that may be performed by the example apparatus 200 (FIG. 4 ) to detect missing location event entries in location data log files received by thecentral facility 60 from a PPM such as the location data log file 180 of thePPM 30. The example process ofFIG. 12 may be used to implement the example validation analysis ofblock 606 ofFIG. 6 . Initially, thedata fault detector 204 initializes a data variable relating to the duration since the last location event by setting the data variable to zero (block 1402). Thedata receiver 202 then reads a next event record (block 1404) from data received from thePPM 30. Thefault detector 204 then determines whether the retrieved event record is a location event record (block 1406). If the retrieved event record is a location event record (block 1406), thefault detector 204 determines the duration between the previous event and the event record retrieved at block 1404 (block 1408). Thefault detector 204 then adds the duration to the duration since the last location event variable (block 1410). Thefault detector 204 then determines whether the duration since the last location event exceeds a threshold duration (block 1412). If the duration exceeds the threshold (block 1412), thefault detector 204 stores a missing location information event indicator in an error log file via the data file interface 206 (block 1414). After storing the missing location event indicator (block 1414) or if the duration does not exceed the threshold (block 1412), thefault detector 204 resets the duration since last location event variable (block 1416) and determines whether another event record remains to be processed (block 1418). If another event record remains to be processed (block 1418) or if thefault detector 204 determines that the event record is not a location event (block 1406), control is passed back toblock 1404. Otherwise, the example process ofFIG. 14 is ended. -
FIG. 15 shows an example process that may be implemented by thecentral facility 60 to answer database requests from advertisers or business users related to behaviors of monitored persons (e.g., the monitoredpersons central facility 60 receives a report request from a business user (block 1502). In the illustrated example, the inquiry requests information about the exposure to an advertisement or advertisements by a monitored person or persons and includes one or more criteria indicative of those advertisements. The request and criteria are then communicated to the analysis server 74 (FIGS. 1 and 4 ) (block 1504). Theanalysis server 74 then runs the query and determines whether any of the criteria in the received request relate to any queries submitted by a monitored person or persons and advertisements to which those monitored persons were exposed (block 1506). For example, theanalysis server 74 may compare the received criteria with data in the advertisement exposure, queries, and retail establishment visits mappingdata structure 628. Theanalysis server 74 retrieves all relevant advertisement exposure events and corresponding timestamps (block 1508) for each query made by a monitored person while within the radius of the advertisement or sometime after the monitored person was within the radius of the advertisement. Theanalysis server 74 then correlates behavior of the monitored person to the advertisement type, advertisement size, repetitions of exposures to the advertisement, and/or any other desired factors (block 1512). Theanalysis server 74 then generates a report (block 1512) using the identified data in response to the report request received from the business user. -
FIG. 16 is an example flow diagram of a location and advertisement exposure correlation process that may be performed by thePPM 30 in thegeographical area 10 ofFIG. 1 and the example apparatus 200 (FIG. 4 ) to determine the advertisements to which the monitoredperson 32 was exposed. Initially, thePPM 30 determines whether the monitoredperson 32 is wearing the PPM 30 (block 1602). If the monitoredperson 32 is not wearing thePPM 30, the example process waits atblock 1602 until thePPM 30 detects that the monitoredperson 32 is wearing thePPM 30. When the monitoredperson 32 is wearing the PPM 30 (block 1602), thePPM 30 determines whether a duration elapsed since the last location acquisition is greater than a scheduled interval (block 1604). If the elapsed duration is not greater than a scheduled interval (block 1604), control is passed back toblock 1602. Otherwise, the location data collector 164 (FIG. 3 ) acquires location information (block 1606) from, for example, the location/motion sensors 110 (FIGS. 2 and 3 ). Thelocation data collector 164 then stores the location information (block 1608) in, for example, the location data log file 180 (FIG. 3 ). Thelocation data collector 164 then communicates the location event data from the location data logfile 180 to the central facility 60 (block 1610) where it is stored in a consumerlocation history database 1614. Thelocation history database 1614 may be implemented using thePPM location file 80 or may be used to store various PPM location files 80. - The
example apparatus 200 can then correlate the locations of the monitoredperson 32 with advertisements identified in the geo-coded advertisement database 210 (block 1612) to which the monitoredperson 32 was likely exposed (block 1612). The process ofblock 1612 can be implemented using one or more of the processes described above to determine the advertisements to which the monitoredperson 32 was exposed. In the illustrated example, the process ofblock 1612 can store the correlation results in anadvertisement exposure database 1616. For example, the example apparatus can store the advertisement exposure data structure 624 (FIG. 6 ) and/or the advertisement exposure, queries, and retail establishment visits mapping data structure 628 (FIG. 6 ) in theadvertisement exposure database 1616. - It is to be understood that the example machine accessible instructions of the flow diagrams of
FIGS. 5A , 5B, 6-9, 10A, 10B, 11A, 11B, and 12-16 may be executed by a processor, a controller and/or any other suitable processing device. For example, the example machine accessible instructions ofFIGS. 5A , 5B, 6-9, 10A, 10B, 11A, 11B, and 12-16 may be embodied in coded instructions stored on a tangible medium such as a flash memory, or random access memory (RAM) associated with a processor. Alternatively, some or all of the example flow diagrams ofFIGS. 5A , 5B, 6-9, 10A, 10B, 11A, 11B, and 12-16 may be implemented using an application specific integrated circuit (ASIC), a programmable logic device (PLD), a field programmable logic device (FPLD), discrete logic, hardware, firmware, etc. Also, some or all of the example flow diagrams ofFIGS. 5A , 5B, 6-9, 10A, 10B, 11A, 11B, and 12-16 may be implemented manually or as combinations of any of the foregoing techniques including, for example, a combination of firmware, software and/or hardware. Further, although the example machine accessible instructions ofFIGS. 5A , 5B, 6-9, 10A, 10B, 11A, 11B, and 12-16 are described with reference to the flow diagrams ofFIGS. 5A , 5B, 6-9, 10A, 10B, 11A, 11B, and 12-16, persons of ordinary skill in the art will readily appreciate that many other techniques of implementing the example methods, apparatus, and systems described herein may be employed. For example, the order of execution of the blocks may be changed, and/or some of the blocks described may be changed, eliminated, sub-divided, or combined. Additionally, persons of ordinary skill in the art will appreciate that the example machine accessible instructions ofFIGS. 5A , 5B, 6-9, 10A, 10B, 11A, 11B, and 12-16 may be carried out sequentially and/or carried out in parallel by, for example, separate processing threads, processors, devices, circuits, etc. -
FIG. 17 is a block diagram of anexample processor system 1710 that may be used to implement the methods, apparatus, and systems described herein including. As shown inFIG. 17 , theprocessor system 1710 includes aprocessor 1712 that is coupled to aninterconnection bus 1714. Theprocessor 1712 includes a register set or registerspace 1716, which is depicted inFIG. 17 as being entirely on-chip, but which could alternatively be located entirely or partially off-chip and directly coupled to theprocessor 1712 via dedicated electrical connections and/or via theinterconnection bus 1714. Theprocessor 1712 may be any suitable processor, processing unit or microprocessor. Although not shown inFIG. 17 , thesystem 1710 may be a multi-processor system and, thus, may include one or more additional processors that are identical or similar to theprocessor 1712 and that are communicatively coupled to theinterconnection bus 1714. - The
processor 1712 ofFIG. 17 is coupled to achipset 1718, which includes amemory controller 1720 and an input/output (I/O)controller 1722. As is well known, a chipset typically provides I/O and memory management functions as well as a plurality of general purpose and/or special purpose registers, timers, etc. that are accessible or used by one or more processors coupled to thechipset 1718. Thememory controller 1720 performs functions that enable the processor 1712 (or processors if there are multiple processors) to access asystem memory 1724 and amass storage memory 1725. - The
system memory 1724 may include any desired type of volatile and/or non-volatile memory such as, for example, static random access memory (SRAM), dynamic random access memory (DRAM), flash memory, read-only memory (ROM), etc. Themass storage memory 1725 may include any desired type of mass storage device including hard disk drives, optical drives, tape storage devices, etc. - The I/
O controller 1722 performs functions that enable theprocessor 1712 to communicate with peripheral input/output (I/O)devices network interface 1730 via an I/O bus 1732. The I/O devices network interface 1730 is communicatively coupled to thenetwork 62 and may be, for example, an Ethernet device, an asynchronous transfer mode (ATM) device, an 802.11 device, a DSL modem, a cable modem, a cellular modem, etc. that enables theprocessor system 1710 to communicate with another processor system. - While the
memory controller 1720 and the I/O controller 1722 are depicted inFIG. 17 as separate functional blocks within thechipset 1718, the functions performed by these blocks may be integrated within a single semiconductor circuit or may be implemented using two or more separate integrated circuits. - Although certain methods, apparatus, systems, and articles of manufacture have been described herein, the scope of coverage of this patent is not limited thereto. To the contrary, this patent covers all methods, apparatus, and articles of manufacture fairly falling within the scope of the appended claims either literally or under the doctrine of equivalents.
Claims (25)
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WO2008003089A3 (en) | 2008-11-06 |
EP2033156A4 (en) | 2012-09-19 |
EP2033156A2 (en) | 2009-03-11 |
US20190012680A1 (en) | 2019-01-10 |
US20230281645A1 (en) | 2023-09-07 |
WO2008003089A2 (en) | 2008-01-03 |
CN101467171A (en) | 2009-06-24 |
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