Security-Oriented Indoor Robots Tracking: An Object Recognition Viewpoint

Indoor robots, in particular AI-enhanced robots, are enabling a wide range of beneficial applications. However, great cyber or physical damages could be resulted if the robots’ vulnerabilities are exploited for malicious purposes. Therefore, a continuous active tracking of multiple robots’ positions...

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Main Authors: Yaoqi Yang, Xianglin Wei, Renhui Xu, Laixian Peng, Yunliang Liao, Lin Ge
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Security and Communication Networks
Online Access:http://dx.doi.org/10.1155/2021/7456552
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spelling doaj-af931b5cdc014995b2e75a47066a9c2a2021-09-27T00:53:16ZengHindawi-WileySecurity and Communication Networks1939-01222021-01-01202110.1155/2021/7456552Security-Oriented Indoor Robots Tracking: An Object Recognition ViewpointYaoqi Yang0Xianglin Wei1Renhui Xu2Laixian Peng3Yunliang Liao4Lin Ge5College of Communications Engineering63rd Research InstituteCollege of Communications EngineeringCollege of Communications EngineeringCollege of Communications EngineeringCollege of Communications EngineeringIndoor robots, in particular AI-enhanced robots, are enabling a wide range of beneficial applications. However, great cyber or physical damages could be resulted if the robots’ vulnerabilities are exploited for malicious purposes. Therefore, a continuous active tracking of multiple robots’ positions is necessary. From the perspective of wireless communication, indoor robots are treated as radio sources. Existing radio tracking methods are sensitive to indoor multipath effects and error-prone with great cost. In this backdrop, this paper presents an indoor radio sources tracking algorithm. Firstly, an RSSI (received signal strength indicator) map is constructed based on the interpolation theory. Secondly, a YOLO v3 (You Only Look Once Version 3) detector is applied on the map to identify and locate multiple radio sources. Combining a source’s locations at different times, we can reconstruct its moving path and track its movement. Experimental results have shown that in the typical parameter settings, our algorithm’s average positioning error is lower than 0.39 m, and the average identification precision is larger than 93.18% in case of 6 radio sources.http://dx.doi.org/10.1155/2021/7456552
collection DOAJ
language English
format Article
sources DOAJ
author Yaoqi Yang
Xianglin Wei
Renhui Xu
Laixian Peng
Yunliang Liao
Lin Ge
spellingShingle Yaoqi Yang
Xianglin Wei
Renhui Xu
Laixian Peng
Yunliang Liao
Lin Ge
Security-Oriented Indoor Robots Tracking: An Object Recognition Viewpoint
Security and Communication Networks
author_facet Yaoqi Yang
Xianglin Wei
Renhui Xu
Laixian Peng
Yunliang Liao
Lin Ge
author_sort Yaoqi Yang
title Security-Oriented Indoor Robots Tracking: An Object Recognition Viewpoint
title_short Security-Oriented Indoor Robots Tracking: An Object Recognition Viewpoint
title_full Security-Oriented Indoor Robots Tracking: An Object Recognition Viewpoint
title_fullStr Security-Oriented Indoor Robots Tracking: An Object Recognition Viewpoint
title_full_unstemmed Security-Oriented Indoor Robots Tracking: An Object Recognition Viewpoint
title_sort security-oriented indoor robots tracking: an object recognition viewpoint
publisher Hindawi-Wiley
series Security and Communication Networks
issn 1939-0122
publishDate 2021-01-01
description Indoor robots, in particular AI-enhanced robots, are enabling a wide range of beneficial applications. However, great cyber or physical damages could be resulted if the robots’ vulnerabilities are exploited for malicious purposes. Therefore, a continuous active tracking of multiple robots’ positions is necessary. From the perspective of wireless communication, indoor robots are treated as radio sources. Existing radio tracking methods are sensitive to indoor multipath effects and error-prone with great cost. In this backdrop, this paper presents an indoor radio sources tracking algorithm. Firstly, an RSSI (received signal strength indicator) map is constructed based on the interpolation theory. Secondly, a YOLO v3 (You Only Look Once Version 3) detector is applied on the map to identify and locate multiple radio sources. Combining a source’s locations at different times, we can reconstruct its moving path and track its movement. Experimental results have shown that in the typical parameter settings, our algorithm’s average positioning error is lower than 0.39 m, and the average identification precision is larger than 93.18% in case of 6 radio sources.
url http://dx.doi.org/10.1155/2021/7456552
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