CN111447553A - WIFI-based vision enhancement S L AM method and device - Google Patents

WIFI-based vision enhancement S L AM method and device Download PDF

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CN111447553A
CN111447553A CN202010224865.1A CN202010224865A CN111447553A CN 111447553 A CN111447553 A CN 111447553A CN 202010224865 A CN202010224865 A CN 202010224865A CN 111447553 A CN111447553 A CN 111447553A
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CN111447553B (en
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于虹
沈龙
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Electric Power Research Institute of Yunnan Power Grid Co Ltd
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Abstract

The invention discloses a WIFI-based visual enhancement S L AM method and device, which comprises the steps of collecting first WIFI signals, clustering the first WIFI signals into first WIFI signatures to form a corresponding regional map database, collecting second WIFI signals, clustering the second WIFI signals into second WIFI signatures, traversing the regional map database based on the second WIFI signatures, calculating the similarity, obtaining a bag with the highest similarity in the regional map database, and carrying out loop detection according to the bag, combining WIFI induction and visual S L AM, preprocessing WIFI data and then processing image data before loop detection, so that the effects of coarse adjustment and fine adjustment can be achieved, the accuracy and the speed of loop detection can be greatly improved, and the method has the remarkable advantages of accuracy, high efficiency and the like.

Description

WIFI-based vision enhancement S L AM method and device
Technical Field
The invention relates to the technical field of indoor navigation positioning and map building methods, in particular to a vision enhancement S L AM method and device based on WIFI.
Background
S L AM is an abbreviation of Simultaneous localization and mapping, means synchronous positioning and mapping, and is mainly used for solving the positioning and mapping problems of the robot in unknown environment motion, the S L AM technology which only uses a camera as an external perception sensor is called as a visual S L AM. classic visual S L AM and generally comprises four main parts of a front-end visual odometer, rear-end optimization, loop detection and mapping.
In the prior art, a robot or other mobile devices are deployed in an unknown environment such as an urban area, and when the robot or other mobile devices are used in remote office, Augmented Reality (AR), service application, and the like, functions of positioning and identifying the surrounding environment and navigating can be realized.
However, in an indoor office environment, the vision S L AM has a phenomenon of perceptual aliasing due to a large number of repeated symmetric spatial structures, which easily causes an erroneous loop detection and leads to an erroneous positioning, thereby increasing the complexity of calculation and the processing time.
Disclosure of Invention
The invention provides a WIFI-based vision enhancement S L AM method and a device, which are used for solving the problems that in an indoor office environment, a vision S L AM has a phenomenon of perception aliasing caused by a large number of repeated symmetrical spatial structures, and error positioning is easily caused by error loop detection, so that the complexity of calculation and the processing time are increased.
According to a first aspect of embodiments of the present invention, there is provided a WIFI-based enhanced vision S L AM method, the method comprising:
collecting first WIFI signals, clustering the first WIFI signals into first WIFI signatures, and forming a corresponding regional map database, wherein the first WIFI signals are collected WIFI signals of different regions in the visual S L AM mapping process, and the first WIFI signatures are clustered into WIFI signatures of different regions in the visual S L AM mapping process;
collecting second WIFI signals, and clustering into second WIFI signatures, wherein the second WIFI signals are the WIFI signals of the current area collected before loop detection, and the second WIFI signatures are the WIFI signatures of the current area clustered before loop detection;
traversing the regional map database based on the second WIFI signature, and calculating similarity to obtain a bag with the highest similarity in the regional map database;
performing the loop detection according to the bag of words.
Optionally, the hierarchical structure of the area map database is as follows:
each regional map database comprises a plurality of regional maps, and each regional map is represented by a regional map WIFI signature;
each regional map comprises a plurality of word bags, and each word bag is represented by a word bag WIFI signature.
Optionally, the WIFI signature is represented by two values, BSSID and RSSI, to represent a corresponding WIFI signal.
Optionally, the similarity is similarity of WIFI signatures, and includes BSSID similarity and RSSI similarity.
Optionally, the calculating of the similarity includes the following steps:
calculating and comparing the BSSID similarity and the RSSI similarity of the area map WIFI signature in the area map database so as to determine the area map, wherein the calculation formula of the BSSID similarity and the RSSI similarity of the area map WIFI signature is as follows:
BSSID similarity ═ ref · cur,
RSSI similarity is v · w/| v | | | w |;
calculating and comparing the RSSI similarity of the bag-of-words WIFI signature contained in the determined area map so as to determine the bag-of-words, wherein the RSSI similarity of the bag-of-words WIFI signature is calculated according to the following formula:
RSSI similarity is u ri/|u||ri|。
According to a second aspect of embodiments of the present invention, there is provided a WIFI-based enhanced vision S L AM apparatus, the apparatus comprising:
the generating module is used for collecting first WIFI signals, clustering the first WIFI signals into first WIFI signatures and forming a corresponding regional map database, wherein the first WIFI signals are collected WIFI signals of different regions in the visual S L AM mapping process, and the first WIFI signatures are clustered into WIFI signatures of different regions in the visual S L AM mapping process;
the clustering module is used for collecting second WIFI signals and clustering the second WIFI signals into second WIFI signatures, the second WIFI signals are the WIFI signals collected in the current area before loop detection, and the second WIFI signatures are the WIFI signatures clustered into the current area before loop detection;
the traversal module is used for traversing the regional map database based on the second WIFI signature, calculating the similarity and obtaining a bag with the highest similarity in the regional map database;
and the detection module is used for carrying out loop detection according to the word bag.
According to the technical scheme, the WIFI detection is integrated into the vision S L AM algorithm, the first WIFI signatures are clustered in the vision S L AM mapping process to form the regional map database, the second WIFI signatures are clustered before loopback detection is performed, the second WIFI signatures are matched with the first WIFI signatures in the regional map database, the similarity is calculated, the word bag with the highest similarity can be quickly and accurately obtained, and loopback detection is performed.
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In order to more clearly illustrate the technical solution of the present invention, the drawings needed to be used in the embodiments will be briefly described below, and it is obvious to those skilled in the art that other drawings can be obtained according to the drawings without any inventive exercise.
Fig. 1 is a flowchart of a WIFI-based enhanced vision S L AM method of the present application;
FIG. 2 is a hierarchical structure diagram of a regional map database of the present application;
FIG. 3 is a flow chart of calculating similarity according to the present application;
fig. 4 is a block diagram of a WIFI-based enhanced vision S L AM device of the present application.
Detailed Description
The following detailed description of the preferred embodiments of the present invention, taken in conjunction with the accompanying drawings, will make the advantages and features of the invention easier to understand by those skilled in the art, and thus will clearly and clearly define the scope of the invention.
As shown in fig. 1, a flowchart of a WIFI-based enhanced vision S L AM method, the method comprising the steps of:
and S1, collecting first WIFI signals, clustering into first WIFI signatures, and forming a corresponding regional map database, wherein the first WIFI signals are collected WIFI signals in different regions in the visual S L AM mapping process, and the first WIFI signatures are clustered into WIFI signatures in different regions in the visual S L AM mapping process.
In the embodiment of the application, when the vision S L AM is used for establishing the image, WIFI signals in different areas are collected firstly to form first WIFI signals, the formed first WIFI signals are clustered into corresponding first WIFI signatures, the whole area is divided into different areas according to the difference of the first WIFI signatures, and accordingly a corresponding area map database is formed.
S2: and collecting second WIFI signals, and clustering into second WIFI signatures, wherein the second WIFI signals are the WIFI signals of the current region collected before loop detection, and the second WIFI signatures are the WIFI signatures of the current region clustered before loop detection.
In the embodiment of the application, before loop detection, the WIFI signals of the current area are collected to form second WIFI signals, and the second WIFI signals are clustered into the second WIFI signature. Through clustering into second WIFI signature can provide the matching basis for subsequent data processing, find out corresponding word bag fast to promote the degree of accuracy and the speed that the loopback detected by a wide margin.
S3: traversing the regional map database based on the second WIFI signature, and calculating similarity to obtain a bag with the highest similarity in the regional map database;
s4: performing the loop detection according to the bag of words.
In the embodiment of the application, before loop detection, the second WIFI signal is collected and clustered into the second WIFI signature, and the second WIFI signature is matched with the first WIFI signature in the regional map database. The specific matching mode is to calculate similarity, the similarity is the similarity of corresponding WIFI signatures, and the bag with the highest similarity in the regional map database can be obtained by calculating the similarity. The bag of words is the sum of the features of each image in a set of images. And finally, carrying out loop detection according to the word bag. By matching the first WIFI signature with the second WIFI signature, the occurrence of false loopback detection can be reduced, and therefore false positioning is reduced. Before loop detection is carried out, WIFI data are processed in advance, image data are processed again, the effect of coarse adjustment and fine adjustment can be achieved, the accuracy and the speed of loop detection are greatly improved, and the method has the remarkable advantages of accuracy, high efficiency and the like.
The hierarchical structure of the regional map database is as follows:
each regional map database comprises a plurality of regional maps, and each regional map is represented by a regional map WIFI signature;
each regional map comprises a plurality of word bags, and each word bag is represented by a word bag WIFI signature.
As shown in fig. 2, the hierarchical structure diagram of the area map databases of the present application is provided, each of the area map databases includes n area maps, where n is an integer greater than or equal to 0, and each of the area maps is represented by an area map WIFI signature. And each regional map also comprises i word bags, wherein i is an integer greater than or equal to 0, and each word bag is represented by a word bag WIFI signature. That is to say, each regional map database corresponds to n regional map WIFI signatures, and each regional map WIFI signature corresponds to i bag of words WIFI signatures. Through establishing regional map data base, can match the WIFI signal according to hierarchical division, when first WIFI signature and second WIFI signature match, can match according to the hierarchical structure relation of one-level to accelerate matching speed and accuracy, and then promote the degree of accuracy and the speed of loop detection by a wide margin.
The WIFI signature is represented by two values, BSSID and RSSI, to represent the corresponding WIFI signal.
In the embodiment of the application, when there are a large number of areas with repeated symmetrical structures in an indoor environment, such as corridors, rooms, etc., and meanwhile, there are a plurality of WIFI signals distributed indoors, a received signal strength indicator is assembled on a robot or a mobile device to receive each WIFI signal. According to the IEEE 802.11 standard, all WIFI Access Points (APs) constantly Signal their presence to inform potential clients of their presence, all clients calculate an RSSI (Received Signal Strength Indication) value for each Access Point (AP) that is visible, each Access Point (AP) has a BSSID (Basic Service Set Identifier) value that is unique to any WIFI Signal. On a robot or mobile device, BSSID values and RSSI values from multiple WIFI signal Access Points (APs) may be collected to form corresponding WIFI signatures. The robot or mobile device may receive different combinations of Access Points (APs) and RSSI values in different areas, the different Access Points (APs) are distinguished by BSSID values, and the WIFI signature received and formed at a certain location may be represented in the following form:
{
AP0(BSSID0):RSSI0
AP1(BSSID1):RSSI1
APk(BSSIDk):RSSIk
where k is an integer greater than or equal to 0.
The matching of the signals of the current region and the whole region can be realized by forming the WIFI signature, so that the corresponding word bag can be found quickly and accurately, loop detection is completed, and wrong positioning caused by wrong loop detection is avoided.
The similarity is the similarity of WIFI signatures and comprises BSSID similarity and RSSI similarity.
The calculation of the similarity comprises the following steps:
calculating and comparing the BSSID similarity and the RSSI similarity of the area map WIFI signature in the area map database so as to determine the area map, wherein the calculation formula of the BSSID similarity and the RSSI similarity of the area map WIFI signature is as follows:
BSSID similarity ═ ref · cur,
RSSI similarity is v · w/| v | | | w |;
calculating and comparing the RSSI similarity of the bag-of-words WIFI signature contained in the determined area map so as to determine the bag-of-words, wherein the RSSI similarity of the bag-of-words WIFI signature is calculated according to the following formula:
RSSI similarity is u ri/|u||ri|。
Fig. 3 is a flowchart of calculating the similarity according to the present application. In the embodiment of the application, similarity is calculated by matching the second WIFI signature of the current region with the first WIFI signature in the region map database, so as to obtain a bag of words with the highest similarity, and finally loop detection is performed according to the bag of words with the highest similarity. The similarity is the similarity of the WIFI signature, and comprises BSSID similarity and RSSI similarity. When the similarity is calculated, firstly, the area map is determined, namely, the similarity of the WIFI signature of the area map is calculated. And combining BSSID values of each area map WIFI signature and a second WIFI signature of the current area into a reference vector, respectively deriving an area map WIFI signature calculation vector ref and a second WIFI signature calculation vector cur of the current area in the area map database according to the presence or absence of the BSSID values, marking the BSSID values as 1 in the vectors when the BSSID values exist, and marking the BSSID values as 0 in the vectors when the BSSID values do not exist. Thus, the calculation formula for obtaining BSSID similarity is as follows:
BSSID similarity is ref · cur.
And when only one BSSID similarity value with a high value appears, determining the corresponding regional map as a target value. When a plurality of BSSID similarity values with high values appear, the RSSI similarity values are further compared, and the RSSI similarity value with the highest value is found out, so that the corresponding regional map is determined to be the target value. The calculation formula of the RSSI similarity is as follows:
RSSI similarity is v · w/| v | | w |,
v is a vector value composed of RSSI values in a local map WIFI signature in the local map database, and w is a vector value composed of RSSI values in the second WIFI signature of the current area.
And after the regional map is determined, determining a bag of words with the highest RSSI similarity in the regional map. After the area map is determined, comparing the RSSI value in the second WIFI signature of the current area with the RSSI value in the bag-of-words WIFI signature corresponding to the bag-of-words contained in the determined area map, recording the RSSI value if the RSSI values are the same, and recording the RSSI value as 0 if the RSSI values are different, so that an RSSI vector u of the second WIFI signature of the current area is formed, and a vector r isiThen, the RSSI value in the bag-of-words WIFI signature corresponding to the bag of words in the determined area map is formed, so that the RSSI similarity calculation formula of the bag-of-words WIFI signature can be derived as follows:
RSSI similarity is u ri/|u||riWherein i is an integer greater than or equal to 0.
And finding out the bag of words with the highest RSSI similarity value by calculating the RSSI similarity of the bag of words, determining the bag of words as a final target value, and finally carrying out loop detection according to the found bag of words.
By calculating the similarity layer by layer according to the hierarchical structure relationship of the regional map database, the word bag can be quickly and accurately found for loop detection, the accuracy and the speed of loop detection are greatly improved, the calculation complexity and the processing time are reduced, timely and accurate positioning is carried out, and the method has the remarkable advantages of accuracy, high efficiency and the like.
Fig. 4 is a block diagram of a WIFI-based enhanced vision S L AM device of the present application, referring to fig. 4, the device includes:
the generating module 11 is configured to collect first WIFI signals, cluster the first WIFI signals into first WIFI signatures, and form a corresponding regional map database, where the first WIFI signals are WIFI signals in different regions collected in a visual S L AM mapping process, and the first WIFI signatures are clustered WIFI signatures in different regions in a visual S L AM mapping process.
In the embodiment of the application, the general range of loop detection can be determined by forming the region map database of the whole region, so that sufficient data resources are provided for subsequent data processing and analysis.
The clustering module 12 is configured to collect second WIFI signals, and cluster the second WIFI signals into second WIFI signatures, where the second WIFI signals are the WIFI signals collected in the current area before loopback detection, and the second WIFI signatures are the WIFI signatures clustered into the current area before loopback detection.
In this application embodiment, through clustering into the second WIFI signature, can provide the matching basis for subsequent data processing, find out corresponding word bag fast to promote the degree of accuracy and the speed that the loopback detected by a wide margin.
The traversal module 13 is configured to traverse the regional map database based on the second WIFI signature, calculate a similarity, and obtain a bag of words with the highest similarity in the regional map database;
a detection module 14, configured to perform the loop detection according to the bag of words.
In the embodiment of the application, the first WIFI signature and the second WIFI signature are matched, so that the occurrence of error loopback detection can be reduced, and therefore the error positioning is reduced. Before loop detection is carried out, WIFI data are processed in advance, image data are processed again, the effect of coarse adjustment and fine adjustment can be achieved, the accuracy and the speed of loop detection are greatly improved, and the method has the remarkable advantages of accuracy, high efficiency and the like.
Other embodiments of the invention will be apparent to those skilled in the art from consideration of the specification and practice of the invention disclosed herein. This application is intended to cover any variations, uses, or adaptations of the invention following, in general, the principles of the invention and including such departures from the present disclosure as come within known or customary practice within the art to which the invention pertains. It is intended that the specification and examples be considered as exemplary only, with a true scope and spirit of the invention being indicated by the following claims.
It will be understood that the invention is not limited to the precise arrangements described above and shown in the drawings and that various modifications and changes may be made without departing from the scope thereof. The scope of the invention is limited only by the appended claims.

Claims (6)

1. A WIFI-based enhanced vision S L AM method, the method comprising:
collecting first WIFI signals, clustering the first WIFI signals into first WIFI signatures, and forming a corresponding regional map database, wherein the first WIFI signals are collected WIFI signals of different regions in the visual S L AM mapping process, and the first WIFI signatures are clustered into WIFI signatures of different regions in the visual S L AM mapping process;
collecting second WIFI signals, and clustering into second WIFI signatures, wherein the second WIFI signals are the WIFI signals of the current area collected before loop detection, and the second WIFI signatures are the WIFI signatures of the current area clustered before loop detection;
traversing the regional map database based on the second WIFI signature, and calculating similarity to obtain a bag with the highest similarity in the regional map database;
performing the loop detection according to the bag of words.
2. The method according to claim 1, wherein the hierarchy of the regional map database is as follows:
each regional map database comprises a plurality of regional maps, and each regional map is represented by a regional map WIFI signature;
each regional map comprises a plurality of word bags, and each word bag is represented by a word bag WIFI signature.
3. The method of claim 1, wherein:
the WIFI signature is represented by two values, BSSID and RSSI, to represent the corresponding WIFI signal.
4. The method of claim 1, wherein:
the similarity is the similarity of WIFI signatures and comprises BSSID similarity and RSSI similarity.
5. The method according to claims 1, 2 and 4, characterized in that the calculation of the similarity comprises the following steps:
calculating and comparing the BSSID similarity and the RSSI similarity of the area map WIFI signature in the area map database so as to determine the area map, wherein the calculation formula of the BSSID similarity and the RSSI similarity of the area map WIFI signature is as follows:
BSSID similarity ═ ref · cur,
RSSI similarity is v · w/| v | | | w |;
calculating and comparing the RSSI similarity of the bag-of-words WIFI signature contained in the determined area map so as to determine the bag-of-words, wherein the RSSI similarity of the bag-of-words WIFI signature is calculated according to the following formula:
RSSI similarity is u ri/|u||ri|。
6. A WIFI-based enhanced vision S L AM apparatus, the apparatus comprising:
the generating module is used for collecting first WIFI signals, clustering the first WIFI signals into first WIFI signatures and forming a corresponding regional map database, wherein the first WIFI signals are collected WIFI signals of different regions in the visual S L AM mapping process, and the first WIFI signatures are clustered into WIFI signatures of different regions in the visual S L AM mapping process;
the clustering module is used for collecting second WIFI signals and clustering the second WIFI signals into second WIFI signatures, the second WIFI signals are the WIFI signals collected in the current area before loop detection, and the second WIFI signatures are the WIFI signatures clustered into the current area before loop detection;
the traversal module is used for traversing the regional map database based on the second WIFI signature, calculating the similarity and obtaining a bag with the highest similarity in the regional map database;
and the detection module is used for carrying out loop detection according to the word bag.
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