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Multi-classifier global dynamic fusion positioning method based on wifi and geomagnetic fingerprint

A fusion positioning and multi-classifier technology, applied in positioning, instrument, ground navigation and other directions, can solve the problems of low positioning accuracy, and the local dynamic fusion method of classifiers cannot maximize the classification and complementary characteristics, and achieve high accuracy and real-time positioning. Good performance, improved accuracy and robustness

Active Publication Date: 2022-02-11
UNIV OF ELECTRONICS SCI & TECH OF CHINA
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Problems solved by technology

[0004] The purpose of the present invention is: to solve the problem that the partial dynamic fusion method of the classifier cannot maximize the complementary characteristics of each classification, and at the same time, to solve the problem that only relying on WiFi fingerprints cannot maximize the information acquisition function of the rich sensors at the mobile terminal, resulting in low positioning accuracy problem, the present invention provides a multi-classifier global dynamic fusion positioning method based on WiFi and geomagnetic fingerprints

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  • Multi-classifier global dynamic fusion positioning method based on wifi and geomagnetic fingerprint
  • Multi-classifier global dynamic fusion positioning method based on wifi and geomagnetic fingerprint
  • Multi-classifier global dynamic fusion positioning method based on wifi and geomagnetic fingerprint

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[0037] In order to solve the problem that the local dynamic fusion method of the classifier cannot maximize the complementary characteristics of each classification, and at the same time, in order to solve the problem that the information acquisition function of the rich sensors on the mobile terminal cannot be maximized by only relying on WiFi, resulting in low positioning accuracy, the present invention provides a A multi-classifier global dynamic fusion positioning method based on WiFi and geomagnetic fingerprints. The method of the present invention uses a mobile terminal to quickly obtain geomagnetic fingerprints and indoor WiFi signal strengths, construct a WiFi signal strength and geomagnetic mixed fingerprint library, and use the mixed fingerprint library to perform Multi-classifier training, global dynamic fusion of the prediction results of multiple classifiers to obtain the final position estimation during actual measurement. This method can fully tap the complementa...

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Abstract

The invention provides a multi-classifier global dynamic fusion positioning method based on WiFi and geomagnetic fingerprints, and relates to the technical field of indoor fusion positioning. The steps of the present invention are divided into offline stage and online positioning stage: offline stage: set up WiFi and geomagnetic mixed fingerprint library and divide into two parts; one part is used for classifier training; the other part is used for training classifier on each grid point weight to obtain the weight matrix; online positioning stage: the online data is preprocessed and then input into each classifier to obtain the classification result; and the fusion weight is obtained by using the online data and the offline fingerprint matching result index weight The classification results are weighted and fused to obtain the final position estimate. The invention solves the problem that the local dynamic fusion method of the classifiers cannot maximize the complementary characteristics of each classifier, and the joint utilization of WiFi and geomagnetic fingerprints effectively improves the positioning accuracy.

Description

technical field [0001] The invention relates to the technical field of indoor fusion positioning, in particular to a multi-classifier global dynamic fusion positioning method based on WiFi and geomagnetic fingerprints. Background technique [0002] In recent years, with the rapid development of Internet of Things technology, indoor positioning technology has gained a lot of attention in military and civilian fields. Due to the complexity of the indoor environment, positioning systems such as WiFi signal strength, geomagnetism, Bluetooth, and inertial navigation information cannot effectively combat multipath propagation in complex indoor environments. Combined use of the above positioning information for positioning in complex indoor environments is an important development direction in the field of indoor positioning. In comparison, there is no need to deploy additional positioning equipment to obtain WiFi and geomagnetic information. WiFi signals have high discrimination ...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G01C21/08G01C21/20G01S5/02
CPCG01C21/08G01C21/206G01S5/0252G01S5/0257
Inventor 郭贤生徐峰李林段林甫万群李会勇沈晓峰
Owner UNIV OF ELECTRONICS SCI & TECH OF CHINA