WO2020184926A1 - Procédé d'analyse d'informations biométriques - Google Patents

Procédé d'analyse d'informations biométriques Download PDF

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Publication number
WO2020184926A1
WO2020184926A1 PCT/KR2020/003229 KR2020003229W WO2020184926A1 WO 2020184926 A1 WO2020184926 A1 WO 2020184926A1 KR 2020003229 W KR2020003229 W KR 2020003229W WO 2020184926 A1 WO2020184926 A1 WO 2020184926A1
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Prior art keywords
information
exercise
sensing
server
output
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PCT/KR2020/003229
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English (en)
Korean (ko)
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최윤제
김영진
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(주)스포투
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Priority claimed from KR1020190149194A external-priority patent/KR102305591B1/ko
Application filed by (주)스포투 filed Critical (주)스포투
Publication of WO2020184926A1 publication Critical patent/WO2020184926A1/fr

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    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/08Detecting, measuring or recording devices for evaluating the respiratory organs
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/103Detecting, measuring or recording devices for testing the shape, pattern, colour, size or movement of the body or parts thereof, for diagnostic purposes
    • A61B5/11Measuring movement of the entire body or parts thereof, e.g. head or hand tremor, mobility of a limb
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/24Detecting, measuring or recording bioelectric or biomagnetic signals of the body or parts thereof
    • A61B5/316Modalities, i.e. specific diagnostic methods
    • A61B5/318Heart-related electrical modalities, e.g. electrocardiography [ECG]
    • AHUMAN NECESSITIES
    • A63SPORTS; GAMES; AMUSEMENTS
    • A63BAPPARATUS FOR PHYSICAL TRAINING, GYMNASTICS, SWIMMING, CLIMBING, OR FENCING; BALL GAMES; TRAINING EQUIPMENT
    • A63B24/00Electric or electronic controls for exercising apparatus of preceding groups; Controlling or monitoring of exercises, sportive games, training or athletic performances
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F3/00Input arrangements for transferring data to be processed into a form capable of being handled by the computer; Output arrangements for transferring data from processing unit to output unit, e.g. interface arrangements
    • G06F3/01Input arrangements or combined input and output arrangements for interaction between user and computer
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06NCOMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
    • G06N3/00Computing arrangements based on biological models
    • G06N3/02Neural networks
    • G06N3/04Architecture, e.g. interconnection topology
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06NCOMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
    • G06N3/00Computing arrangements based on biological models
    • G06N3/02Neural networks
    • G06N3/08Learning methods

Definitions

  • the present invention relates to a method of analyzing biometric information, and more particularly, to a method of receiving biometric information sensed by a sensing device, analyzing it, and calculating information including exercise information or performance indicators.
  • biometric information sensing devices As interest in health increases, various types of biometric information sensing devices and biometric information analysis methods are being developed. In addition, as various wearable devices that can be directly worn by users are spreading, devices specialized for healthcare are being developed.
  • the conventional wearable type biometric information sensing device and biometric information analysis method are specialized in outdoor exercise or tactical training analysis due to high dependence on location information including GPS, and multiplayer monitoring is performed with soccer, basketball and It was only limitedly introduced and used in group sports of the same team, and there was a problem that it was not suitable for routine-based personal exercise performed indoors.
  • the conventional biometric information analysis method has a problem in that it provides only a performance index suitable for group sports mainly in a team unit, such as an activity amount, and does not provide a performance index suitable for an individual exercise performed indoors.
  • the problem to be solved by the present invention is not limited to measuring the amount of activity that relies on GPS, and by sensing and analyzing information about the user's respiration, electrocardiogram, oxygen saturation, body temperature, or motion, It is to provide a precise biometric information analysis method that can be actively used in personal exercise.
  • the problem to be solved by the present invention is to calculate accurate exercise information (for example, exercise frequency information) by sensing precise breathing information by a fiber-type breathing sensor and analyzing it by matching it with other biometric information sensed at the same time. This is to provide a method for analyzing biometric information.
  • the problem to be solved by the present invention is to provide a performance index suitable for a routine-based personal exercise performed indoors by analyzing biometric information.
  • the breathing information is sensed by a method in which a fiber-type breathing sensor coated with carbon nanotubes detects a change in the volume of the chest, and breathing Include pattern, breathing frequency, or volume.
  • the exercise information generating step includes the step of generating, by a server, exercise type information by applying a characteristic value for each exercise, and the exercise
  • the star feature value includes a feature value of horizontal, vertical or rotational motion for each type of exercise.
  • the exercise information generation step comprises: constructing a data set based on the received sensing information, and the sensing information and the data set And generating exercise type information by deep learning on the basis of.
  • the data set is constructed by matching one or more of the sensing information and exercise type information.
  • the server in the biometric information analysis method according to another embodiment of the present invention for solving the above-described problem, the server generates exercise information by comparing a plurality of sensing information for the same time to correspond to time information. It includes the step of.
  • the index calculation step is a step of calculating the performance index by deep learning
  • the performance index is consistency, accuracy, and time required.
  • Count or predicted record and the consistency means the degree of correspondence of each performance action in the repetitive performance of the same exercise action
  • the accuracy means the degree of agreement with the reference action of each performance action
  • the required time Is the total time spent on exercise, the time spent on performing the exercise, or the time taken to take a break during exercise, and the count includes the number of movements, the number of sets, or the number of times that the correct movement was not performed
  • the expected Records include those that mean predicted records calculated based on progression speed and physical strength.
  • the method for analyzing biometric information according to another embodiment of the present invention for solving the above-described problem further includes the step of receiving, by the server, authentication information of the user input from the sensing device.
  • an output information generation step in which a server generates output information based on the sensing information, the exercise information, or the performance index, and the server outputs the output information. It further comprises an output information transmission step of transmitting the information to the sensing device or the client device, the output information includes the information output from the output unit of the sensing device or the client device.
  • the output information includes the sensing information, the exercise information, or change information of an output lighting color corresponding to a change in the performance indicator. Includes that.
  • the output information includes the sensing information, the exercise information, or recommended exercise information generated based on the performance index. do.
  • the client device includes a user client device or a trainer client device, and the output information transmission step is received from a plurality of sensing devices. And transmitting a plurality of the output information corresponding to the sensing information to one trainer client device.
  • the biometric information analysis program according to another embodiment of the present invention for solving the above-described problems is combined with a computer which is hardware, and is stored in a medium to execute any one of the above-described methods.
  • a biometric information analysis server device for solving the above-described problem includes a communication unit that receives sensing information from a sensing device or transmits sensing information, exercise information, or performance indicators to the sensing device or a client device, An analysis unit that generates exercise information based on the sensing information and calculates a performance index based on the sensing information or the exercise information, and a storage unit that stores the sensing information, the exercise information, or the performance index, and the sensing
  • the information includes respiration, electrocardiogram, oxygen saturation, temperature, location or motion information
  • the exercise information includes exercise type, exercise frequency, or exercise intensity information.
  • the user by receiving the output information by lighting from the sensing device for the exercise information or the performance indicator, the user can receive information on the exercise performance even without having a client device (eg, a smartphone) close to each other. It can be obtained easily.
  • a client device eg, a smartphone
  • a plurality of users wear a sensing device and communicate with one trainer client device through a server, so that a trainer can monitor a plurality of users without space constraints in group training, You can provide personalized feedback.
  • FIG. 1 is a diagram showing the configuration of a biometric information sensing device for receiving sensing information according to an embodiment of the present invention.
  • FIG. 2 is a diagram illustrating a configuration of a housing of a biometric information sensing device for receiving sensing information according to an embodiment of the present invention.
  • FIG. 3 is a diagram illustrating a method of analyzing biometric information according to an embodiment of the present invention.
  • FIG. 4 is a diagram illustrating a server according to an embodiment of the present invention.
  • FIG. 5 is a view for explaining an analysis unit according to an embodiment of the present invention.
  • FIG. 6 is a diagram illustrating a graph of time of biometric information sensed at the same time according to an embodiment of the present invention.
  • FIG. 7 is a diagram illustrating a performance index according to an embodiment of the present invention.
  • FIG. 8 is a diagram for explaining a method for analyzing biometric information including generating and transmitting output information according to an embodiment of the present invention.
  • FIG. 9 is a diagram showing a configuration of an output unit of a biometric information sensing device for outputting output information according to an embodiment of the present invention.
  • FIG. 10 is a diagram illustrating a biometric information sensing device for changing and outputting an output lighting color according to an embodiment of the present invention and a wearing state.
  • 11 and 12 are diagrams for explaining a screen for providing biometric information, exercise information, or performance index according to an embodiment of the present invention.
  • FIG. 13 is a diagram illustrating a communication relationship between a biometric information sensing device and a client device according to an embodiment of the present invention.
  • 'biometric information' is information received from a biometric information sensing device, and may include respiration, electrocardiogram, oxygen saturation, body temperature, location, or motion information, but is not limited thereto and includes all information on the user's body. can do.
  • 'exercise information' is information on an exercise performed by a user, which is generated by analyzing received biometric information, and may include exercise type, exercise frequency, exercise intensity, or exercise time information, but is not limited thereto. Can contain all information about the exercise being performed.
  • the'performance indicator' means an index calculated based on biometric information or exercise information in order to provide information on the result of an exercise performed by a user.
  • the term "computer” includes all various devices capable of performing arithmetic processing.
  • computers are not only desktop PCs and notebooks, but also smart phones, tablet PCs, cellular phones, PCS phones, and synchronous/asynchronous systems.
  • a mobile terminal of the International Mobile Telecommunication-2000 (IMT-2000), a Palm Personal Computer (PC), a personal digital assistant (PDA), and the like may also be applicable.
  • IMT-2000 International Mobile Telecommunication-2000
  • PC Palm Personal Computer
  • PDA personal digital assistant
  • a'client device' refers to all devices including a communication function that users can use by installing a program (or application). That is, the client device is a cellular phone, a PCS phone (Personal Communication Service phone), a synchronous/asynchronous mobile terminal of the International Mobile Telecommunication-2000 (IMT-2000), a Palm Personal Computer (Palm Personal Computer), Personal Digital Assistant (PDA), Smart phone, WAP phone (Wireless Application Protocao phone), mobile game console, tablet PC, smart watch, notebook PC, desktop PC, smart camera, smart TV It may include various communication devices such as. Further, the client device does not basically include a communication function, but may include a device capable of performing communication by combining a memory chip having a communication function.
  • FIG. 1 is a diagram showing a configuration of a biometric information sensing device for receiving sensing information according to an embodiment of the present invention
  • FIG. 2 is a biometric information sensing device for receiving sensing information according to an embodiment of the present invention. It is a diagram showing the configuration of the housing.
  • a biometric information sensing device 10 for receiving sensing information includes a housing 100, a wearing part 200 coupled to one or both sides of the housing, and the It may include a fiber-type breathing sensor 300 located on the wearing part.
  • the housing 100 of the biometric information sensing device for receiving sensing information may include a sensor unit 110, a power supply unit 120, or a control unit 130.
  • the sensor unit may include an ECG sensor 112, an oxygen saturation sensor 114, a temperature sensor 116, or a motion sensor 118, and various sensors capable of sensing biometric information may be included without being limited thereto. have.
  • the power supply unit 120 supplies power necessary for driving the biometric information sensing device, and may include a battery, and the controller 130 can control overall operations related to the biometric information sensing device, and each component It is connected to the field and can control the operation of each component.
  • the wearing part 200 is coupled to one side or both sides of the housing, and may be a band that can be worn around the user's chest, more preferably, due to the change in the volume of the chest due to the user's breathing. It may be a band having elasticity so that it can be stretched or contracted accordingly.
  • the wearing unit may further include an adjustment unit capable of adjusting a length according to the user's chest circumference.
  • the fibrous breathing sensor 300 may refer to a breathing sensor that is located on a part of the wearing part 200 and senses the user's breathing information by detecting a change in the volume of the chest caused by the user's breathing.
  • the fiber-type breathing sensor is coated with a carbon nanotube (CNT) on one side of the wearing part in the form of a band surrounding the user's chest, and carbon generated by volume change due to contraction and expansion of the chest during the user's breathing.
  • CNT carbon nanotube
  • the deformation rate of the wearing part to which the carbon nanotube is applied can be sensed, and through this, the respiratory information including the breathing pattern, the number of breaths, or the amount of breathing can be sensed.
  • the change in the volume of the chest may be detected in nano-millimeter units, but is not limited thereto.
  • a step for removing noise from the breathing information may be included.
  • the fiber-type breathing sensor is a step of attaching a polyurethane film as a buffer layer to one side of the wearing part made of an elastic band, applying a carbon nanotube on the polyurethane film It may be manufactured by a method including the step of, thermal curing the carbon nanotube layer, attaching a polyurethane film on the carbon nanotube layer as a protective layer, or forming an electrode terminal.
  • the polyurethane film may be attached by a thermal transfer printing technique, and the carbon nanotubes may be applied by a screen printing technique.
  • the thickness of the applied carbon nanotube layer may be 50 to 300 ⁇ m, and the application shape, length, or area may be variously changed according to the design of the biometric information sensing device.
  • the thermal curing step may include thermal curing using an infrared conveyor dryer, and the polyurethane film attached as the protective layer may include a transparent film or an opaque film,
  • the electrode terminal may include an eyelet, a metal wire, or a copper thin film.
  • the ECG sensor 112 may include one or more ECG electrodes 113 for detecting a user's ECG signal, and the plurality of ECG electrodes are located on both sides of the housing so that they can contact the body at a spaced apart position. It can be located on the wearing part.
  • the ECG electrode may include a conductive silicon ECG electrode.
  • a conversion unit for converting the detected ECG signal into heart rate information may be further included in the housing 100, and the ECG signal may include amplitude data of an ECG QRS waveform.
  • the oxygen saturation sensor 114 may include an optical sensor that senses blood oxygen saturation (SpO2) data using a degree of absorption of a specific wavelength of light, and the body temperature sensor 116 It may include a temperature sensor that measures the body temperature of the user by contacting.
  • the oxygen saturation sensor or the body temperature sensor may be modularized to increase the recognition rate.
  • the motion sensor 116 may include an acceleration sensor, an angular velocity sensor, or a geomagnetic sensor.
  • the angular velocity sensor may mean a gyro sensor, but is not limited thereto, and the motion sensor may sense acceleration information, angular velocity information, or geomagnetic information to generate motion information about the movement of a user wearing the sensing device. .
  • the plurality of sensors for sensing the biometric information may be configured as a module including a detection unit for detecting a biosignal and a conversion unit for converting the detected biosignal into biometric information.
  • biometric information sensing device for receiving sensing information according to an embodiment of the present invention
  • the device for receiving sensing information of the present invention is not limited thereto, and the user's biometric information Includes all sensing devices capable of sensing.
  • the method for analyzing biometric information according to an embodiment of the present invention includes an information receiving step (S100) in which a server receives sensing information, and an exercise information generation in which the server generates exercise information based on the sensing information.
  • Step (S110) an index calculation step (S120) in which a server calculates a performance index based on the sensing information or exercise information, and a storage step (S130) in which the server stores the sensing information, the exercise information or the performance index.
  • S100 information receiving step
  • an exercise information generation in which the server generates exercise information based on the sensing information.
  • Step (S110) an index calculation step (S120) in which a server calculates a performance index based on the sensing information or exercise information
  • a storage step (S130) in which the server stores the sensing information, the exercise information or the performance index.
  • the sensing information means biometric information including respiration, electrocardiogram, oxygen saturation, body temperature, location, or motion information sensed by the sensing device, and the exercise information is an exercise type as a result of analysis by the server based on the sensing information.
  • Exercise frequency or exercise intensity information may be included.
  • the respiration information may include that the above-described carbon nanotube-coated fibrous respiration sensor is sensed by a method of detecting the chest volume change according to the user's breathing, the respiration information , Breathing frequency or volume.
  • the server 20 may include an analysis unit 700, and the analysis unit is an exercise information recognition model that generates exercise information based on biometric information. It may include 720.
  • the server may receive sensing information from the biometric information sensing device and input the received sensing information into an exercise information recognition model to generate exercise information.
  • the exercise information recognition model 720 may be configured not only as a single recognition module, but also may be configured to include a plurality of recognition modules, for example, exercise type information recognition module 722, exercise frequency information A recognition module 724 or an exercise intensity information recognition module 726 may be included.
  • the exercise information generation step (S110) in which the server generates exercise information based on the sensing information may include the step of generating exercise type information by applying the exercise-specific feature value by the server, and
  • the feature value may include a feature value of horizontal, vertical, or rotational motion for each type of motion.
  • motion information including acceleration, angular velocity, or slope of the user sensed by the motion sensor is received and input to the exercise type information recognition module 722, and the exercise type information recognition module includes the input motion information and Specific exercise type information may be generated by matching exercise type information including characteristic values of the matched motion.
  • the exercise information generation step may include a data selection step, a preprocessing step, an auto counting step, a data feature extraction step, or a motion recognition step.
  • the data selection step may mean selecting data to be used for analysis from among various sensing information.
  • the pre-processing step is a step of removing a section that will not be used for analysis (e.g., a preparation section before and after exercise or a finishing section of 10 seconds) from the data to be used for analysis (for example, 3-axis acceleration data).
  • a section that will not be used for analysis e.g., a preparation section before and after exercise or a finishing section of 10 seconds
  • processing data e.g, magnitude
  • removing noise eg, butterworth bandpass filtering
  • it may include a conversion section processing step.
  • the analysis unit may include not only a fixed size, but also various sizes (eg, the length of an exercise motion (1rep) calculated by auto counting).
  • the auto-counting step may mean counting the number of peaks in a certain section for data from which noise has been removed after pre-processing, and the auto-counting step includes a plurality of different types for the same time. Accuracy can be improved by applying to sensing information.
  • the data feature extraction step refers to a step of extracting a feature to be used for motion recognition for data from which noise has been removed after processing (for example, 3-axis acceleration data or angular velocity data), and the data feature is averaged ), Standard Deviation, Correlation, Peak Interval or Peak Amplitude.
  • the motion recognition step is a step of recognizing an action performed by a classification algorithm using the data feature
  • the classification algorithm includes hierarchical clustering (Hierarchical Method), logistic regression, and K-NN (K- nearest neighbors), Decision Tree, Random Forest, support vector machine (SVM), Na ve Bayes, Hidden Markov Models (HMMs), or May include, but is not limited to, artificial neural networks including RNN or CNN.
  • the exercise information generation step (S110) in which the server generates exercise information based on the sensing information is a step of constructing a data set based on the received sensing information, and deep learning based on the sensing information and the data set.
  • it may include the step of generating exercise type information.
  • the data set may include one that is constructed by matching one or more sensing information and exercise type information.
  • the server acquires sensing information sensed when a user exercising by wearing a biometric information sensing device performs a single type of exercise, and may construct a dataset by matching the sensing information with the exercise type information.
  • the dataset can be expressed as follows.
  • the sensed biometric information is body temperature (36.5°C), heart rate (180bpm), respiration (25bpm), oxygen saturation (99.5%), and triaxial values.
  • speed 0.010, 0.001, 0.20
  • 3-axis Euler angle 0.1, 0, 0
  • the exercise information recognition model or the exercise type information recognition module may be trained through a deep learning learning model based on the data set. That is, the exercise information recognition model or exercise type information recognition module is built with a specific deep learning algorithm, and learning is performed by matching specific exercise type information and biometric information sensed during execution of the corresponding exercise information based on the dataset. Can be.
  • the exercise information recognition model, the performance index calculation model or the individual exercise information recognition module, and the performance index recognition module may be formed as an artificial neural network composed of multi-layers.
  • the deep learning algorithm may include a CNN, RNN, LSTM, or GRU scheme, but is not limited thereto.
  • the exercise information generation step in the biometric information analysis method is a step of generating exercise information by comparing a plurality of sensing information for the same time to correspond to time information. It may include. That is, the sensing information may further include information about time, and the time information may mean a time at which the biometric information was sensed. By matching and comparing a plurality of sensing information according to time, the server can calculate precise exercise information or performance index.
  • the server may conveniently and accurately analyze the exercise information by matching the received sensing information with a graph against time as shown in FIG. 6. For example, when a sensing device user performs a'squat' exercise, by comparing the user's breathing information 50 and motion information 60 sensed at the same time in time, including exercise frequency information and exercise amount information Exercise information can be analyzed more precisely.
  • a regular breathing pattern e.g., inhalation during a down motion and exhalation during an up motion
  • a strong load is applied to the muscles (e.g., When it reaches the lowest point in the squat), the bracing point is measured and compared with motion information (e.g., up and down movements) to allow precise analysis of the number of exercise. It is possible to analyze exercise intensity or amount of exercise by using the point that the stopping time is longer.
  • the step of calculating the performance indicator may be performed through a deep learning algorithm.
  • the server 20 may include an analysis unit 700, and the analysis unit may include a performance index calculation model 740.
  • the server may calculate the performance index by inputting the biometric information received from the biometric information sensing device or the exercise information generated by the exercise information recognition model 720 into the performance index calculation model 740.
  • the performance indicator calculation model 740 may be configured not only as a single recognition module, but also may be configured to include a plurality of recognition modules.
  • the performance indicator may include consistency, accuracy, time required, count, or predicted recording, but is not limited thereto.
  • Consistency In Action means the degree of agreement with each other in the repetitive performance of the same motion motion, and the accuracy can mean the degree of agreement with the reference motion of each repetitive action. For example, when the user repeatedly performs the squat 10 times (10 rep), the consistency is the degree of correspondence between each 1 rep movement, and the accuracy may mean the degree of correspondence of each 1 rep movement to the movement of the correct posture.
  • the time required may include a total time spent in exercise, a time spent in performing an exercise motion, or a time taken for a break during exercise.
  • the time required may include a total time spent in exercise, a time spent in performing an exercise motion, or a time taken for a break during exercise.
  • the count may include the number of times the operation is performed, the number of sets, or the number of times that the correct operation is not performed.
  • the predicted record may be calculated based on the user's progressing speed for a specific goal and remaining physical strength. For example, in the case of measuring a time record for a predetermined number of repetitions in CrossFit, an expected record may be calculated based on the user's current pace and remaining physical strength by analyzing sensing information or exercise information.
  • the performance indicators include exercise readiness before exercise, physical stability after exercise, physical fitness of the user, maximum oxygen intake, number of possible movements per minute (RPM), and the section where breathing was stopped due to a strong exercise load during exercise (Bracing Point). , It may include calories burned during exercise or power for movement during exercise, but is not limited thereto.
  • the method for analyzing biometric information may further include receiving authentication information of a user input from the sensing device.
  • the authentication information may include ID, PW, or biometric information including fingerprint, iris, and face recognition.
  • the server may receive sensing information corresponding to the user's authentication information by not only the user's personal sensing device but also a common sensing device provided in the fitness center, The sensing information, exercise information, or performance index may be stored or transmitted to a sensing device or a client device. That is, by authenticating (logging in) the authentication information through a common sensing device, the user can check or manage his or her own biometric information, exercise information, and records through the server, and compare the records through sharing with others.
  • an output information generation step in which a server generates output information based on sensing information, exercise information, or performance index, and a server sensing output information Alternatively, it may further include the step of transmitting the output information transmitted to the client device.
  • the output information is information output from the sensing device or the output unit of the client device, and may include image information or audio information, and may include sensing information, exercise information, or information on performance indicators, but is not limited thereto. .
  • FIG. 9 is a diagram showing a configuration of an output unit of a biometric information sensing device for outputting output information according to an embodiment of the present invention
  • FIG. 10 is a diagram for outputting by changing an output lighting color according to an embodiment of the present invention.
  • a diagram for explaining a biometric information sensing device and a wearing state. 9 and 10, in one embodiment, the biometric information sensing device for receiving and outputting output information from a server may further include an output unit 400 on the front surface of the housing 100, and the output unit 400 may include an illumination unit 410 or a display unit 420.
  • the lighting unit 410 may include a device that changes and outputs an illumination color under the control of a controller in response to changes in biometric information sensed by a sensor or information received from a server or a client device, and includes an LED.
  • a device that changes and outputs an illumination color under the control of a controller in response to changes in biometric information sensed by a sensor or information received from a server or a client device, and includes an LED.
  • the user can easily obtain biometric information or exercise information by changing the lighting color or the presence or absence of lighting without putting a client device (eg, a smartphone) close.
  • a client device eg, a smartphone
  • the trainer can easily recognize the user's biometric information, exercise information, or the presence or absence of injuries, thereby improving the efficiency of exercise. There is an effect that can prevent injury to the user.
  • the user may set the lighting color change reference information
  • the server may receive the setting reference information and generate and transmit output information including the change information of the output lighting color based thereon.
  • a normal range for specific biometric information may be set, and when the biometric information falls within the normal range, green illumination may be output, but when the biometric information is out of the normal range, red illumination may be output.
  • the server When setting reference information is received and the heart rate information received in real time is analyzed, output information that changes to be output as red light when the heart rate falls below 140 may be generated, and transmitted to the sensing device. In this case, there is an effect that the user can easily receive feedback on biometric information or exercise information by the output light color.
  • feedback on the exercise posture may be received by setting to output green light when a user performs an accurate motion for a specific exercise and red light when performing an incorrect motion.
  • the illumination color change reference information may include a plurality of reference information. That is, the user may set a plurality of criteria, and the server may receive the plurality of reference information, generate output information for each reference information, and transmit it to a sensing device or a client device.
  • the server when the user is set to output yellow light when a user detects an injury risk sign at the same time, the server receives the operation accuracy reference information and the injury risk reference information, and generates and transmits output information for each standard.
  • the standard for changing the lighting color is not limited thereto, and a user may set variously.
  • the output unit 400 of the sensing device may include a display unit 420 and the output unit may include both a lighting unit and a display unit.
  • the output information may simultaneously include change information of the output lighting color and sensing information, exercise information, or performance index information about the change information of the output lighting color.
  • the lighting unit when a user exercises by setting the heart rate 140 as the lighting color change reference information, the lighting unit may output illumination of a color corresponding to the reference, and the display unit may display the user's heart rate.
  • the user can simply obtain information (whether or not the heart rate exceeds 140) according to the illumination color, and when the illumination color changes, specific heart rate information can be obtained by checking the display unit.
  • the output information may include recommended exercise information generated based on the sensing information, exercise information, or performance index.
  • the recommended exercise information is generated based on personal biometric information, exercise information, or performance index, and may include accurate posture or breathing method, warm-up exercise information, or finishing exercise information of a specific exercise performed by the user, but is limited thereto. It is not.
  • 11 and 12 are diagrams for explaining a screen for providing biometric information, exercise information, or performance index according to an embodiment of the present invention.
  • the output information may be information output from a client device (eg, a smartphone).
  • the output information may be numerical or graphed information of the user's biometric data, and may include exercise information or performance indicators.
  • Communication includes wired or wireless, for example, Bluetooth communication, Bluetooth Low Energy (BLE) communication, near field communication unit, WLAN (Wi-Fi) communication, Zigbee communication, infrared (IrDA, infrared Data Association) communication, WFD (Wi-Fi Direct) communication, UWB (ultra wideband) communication, Ant+ communication WIFI communication method can be used to communicate, but is not limited thereto.
  • BLE Bluetooth Low Energy
  • Wi-Fi Wi-Fi
  • Zigbee communication infrared (IrDA, infrared Data Association) communication
  • WFD Wi-Fi Direct
  • UWB ultra wideband
  • Ant+ communication WIFI communication method can be used to communicate, but is not limited thereto.
  • the communication relationship may include a plurality of biometric information sensing devices communicating with one trainer client device (FIG. 13(a)) or communicating through a server (FIG. 13(b)).
  • information on a plurality of users performing an exercise in the same place as well as in different places may be transmitted to one trainer.
  • the trainer can monitor a large number of remote people in real time without space constraints.
  • a server device 20 for performing a biometric information analysis method may receive sensing information from a sensing device, or receive sensing information, exercise information, or performance indicator.
  • the communication unit 500 that transmits the sensor to the sensing device 10 or the client device 30, the analysis unit 700 that generates exercise information based on the sensing information and calculates a performance index based on the sensing information or exercise information, and sensing It may include a storage unit 600 for storing information, exercise information or performance index.
  • the biometric information analysis method which is a method according to an embodiment of the present invention described above, may be implemented as a biometric information analysis computer program (or application) to be executed by combining a computer as hardware and stored in a medium.
  • the steps of a method or algorithm described in connection with an embodiment of the present invention may be implemented directly in hardware, implemented as a software module executed by hardware, or a combination thereof.
  • the software module includes Random Access Memory (RAM), Read Only Memory (ROM), Erasable Programmable ROM (EPROM), Electrically Erasable Programmable ROM (EEPROM), Flash Memory, hard disk, removable disk, CD-ROM, or It may reside on any type of computer-readable recording medium well known in the art to which the present invention pertains.

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Abstract

L'invention concerne un procédé d'analyse d'informations biométriques. Le procédé d'analyse d'informations biométriques comprend : une étape de réception d'informations pour recevoir, par un serveur, des informations de détection ; une étape de génération d'informations d'exercice pour générer, par le serveur, des informations d'exercice sur la base des informations de détection ; une étape de calcul d'indicateur pour calculer, par le serveur, un indicateur de performance sur la base des informations de détection ou des informations d'exercice ; une étape de stockage pour stocker, par le serveur, les informations de détection, les informations d'exercice, ou l'indicateur de performance ; une étape consistant à recevoir, par le serveur, des informations d'authentification d'une entrée d'utilisateur à partir d'un dispositif de détection ; une étape de génération d'informations de sortie pour générer, par le serveur, des informations de sortie sur la base des informations de détection, des informations d'exercice, ou l'indicateur de performance ; et une étape de transmission d'informations de sortie pour transmettre, par le serveur, les informations de sortie au dispositif de détection ou à un dispositif client, les informations de détection étant acquises par détection d'informations biométriques comprenant la respiration, l'électrocardiogramme, la saturation en oxygène, la température corporelle, l'emplacement ou les informations de mouvement, les informations d'exercice comprenant des informations concernant un type d'exercice, le nombre d'exercices, ou l'intensité d'exercice, et l'étape de génération d'informations d'exercice ou l'étape de calcul d'indicateur utilisant un algorithme d'apprentissage profond.
PCT/KR2020/003229 2019-03-12 2020-03-09 Procédé d'analyse d'informations biométriques WO2020184926A1 (fr)

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KR1020190149194A KR102305591B1 (ko) 2019-03-12 2019-11-20 생체정보 분석 방법

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KR20110115880A (ko) * 2010-04-16 2011-10-24 신연철 휴대용 생체정보 모니터링 장치 및 이를 이용한 생체정보 모니터링 시스템
JP2012075489A (ja) * 2010-09-30 2012-04-19 Seiko Epson Corp 生体運動情報表示処理装置及び生体運動情報処理システム
KR101641455B1 (ko) * 2015-01-28 2016-07-29 건양대학교산학협력단 휴대용 건강상태 모니터링 시스템
KR20170009081A (ko) * 2015-07-15 2017-01-25 경희대학교 산학협력단 전기방사하여 얻은 나노섬유 웹 형태의 pla 압전소재를 이용한 생체신호 측정센서
KR101782975B1 (ko) * 2016-06-13 2017-09-28 주식회사 탱그램팩토리 스마트 운동 보조 디바이스와 이를 이용한 운동 내역 분석 및 판단 방법 및 이와같은 방법을 수행하기 위한 기록매체

Patent Citations (5)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
KR20110115880A (ko) * 2010-04-16 2011-10-24 신연철 휴대용 생체정보 모니터링 장치 및 이를 이용한 생체정보 모니터링 시스템
JP2012075489A (ja) * 2010-09-30 2012-04-19 Seiko Epson Corp 生体運動情報表示処理装置及び生体運動情報処理システム
KR101641455B1 (ko) * 2015-01-28 2016-07-29 건양대학교산학협력단 휴대용 건강상태 모니터링 시스템
KR20170009081A (ko) * 2015-07-15 2017-01-25 경희대학교 산학협력단 전기방사하여 얻은 나노섬유 웹 형태의 pla 압전소재를 이용한 생체신호 측정센서
KR101782975B1 (ko) * 2016-06-13 2017-09-28 주식회사 탱그램팩토리 스마트 운동 보조 디바이스와 이를 이용한 운동 내역 분석 및 판단 방법 및 이와같은 방법을 수행하기 위한 기록매체

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