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Accuracy Evaluation of Local Positioning by Radiomap Building and Inertial Navigation System

Abstract

Article is devoted to the proposed method for constructing radiomaps of received Wi-Fi signal levels and inertial navigation signals from the built-in sensors of microelectromechanical devices. Experimental estimation of the positioning accuracy of the mobile device indoors using radio levels of the received levels and built-in inertial navigation systems is performed. The experiment was conducted in the expanded Wi-Fi network of SPbGUT and showed the possibility of increasing the positioning accuracy by 15 % in case of combining Wi-Fi signal and inertial navigation in comparison with the known method of radiomap building.

About the Authors

A. V. Kireev
The Bonch-Bruevich State University of Telecommunications
Russian Federation


G. A. Fokin
The Bonch-Bruevich State University of Telecommunications
Russian Federation


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For citations:


Kireev A.V., Fokin G.A. Accuracy Evaluation of Local Positioning by Radiomap Building and Inertial Navigation System. Proceedings of Telecommunication Universities. 2017;3(4):54-62. (In Russ.)

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ISSN 1813-324X (Print)
ISSN 2712-8830 (Online)