Dual-verified secure localization method for unmanned intelligent vehicles

Unmanned intelligent vehicles are exposed to high risks of network attack, hardware attack, operating system attack and software attack. They are susceptible to physical or remote security attacks, causing it to deviate from the delivery trajectory and fail the delivery task, or even be manipulated...

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Main Authors: GU Xiaodan, XIA Guozheng, SONG Bingchen, YANG Ming, LUO Junzhou
Format: Article
Language:zho
Published: Editorial Department of Journal on Communications 2024-06-01
Series:Tongxin xuebao
Subjects:
Online Access:http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2024038/
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author GU Xiaodan
XIA Guozheng
SONG Bingchen
YANG Ming
LUO Junzhou
author_facet GU Xiaodan
XIA Guozheng
SONG Bingchen
YANG Ming
LUO Junzhou
author_sort GU Xiaodan
collection DOAJ
description Unmanned intelligent vehicles are exposed to high risks of network attack, hardware attack, operating system attack and software attack. They are susceptible to physical or remote security attacks, causing it to deviate from the delivery trajectory and fail the delivery task, or even be manipulated to disrupt normal operation of the factory. To address this problem, a dual-verified secure localization method for unmanned intelligent vehicles was proposed. The existing Wi-Fi network infrastructure was utilized by the vehicles for fingerprinting localization and a feature fusion strategy was designed to realize the dynamic fusion of Wi-Fi and magnetic field fingerprints. Multiple environmental monitoring points were deployed to collect the sound signals made by vehicles to calculate the position based on time difference of arrival and spatial segmentation method. Then the location reported by the vehicle was compared with the result of monitoring points for verification. Once an abnormal position was detected, an alert would be issued, ensuring the normal operation of the unmanned intelligent vehicles. The experimental results in the real indoor scenarios show that the proposed method can effectively track the positions of the target unmanned intelligent vehicle, and the positioning accuracy is better than existing benchmark algorithms.
format Article
id doaj-art-163774078c8f4231900fdef2ba4fb6a0
institution Kabale University
issn 1000-436X
language zho
publishDate 2024-06-01
publisher Editorial Department of Journal on Communications
record_format Article
series Tongxin xuebao
spelling doaj-art-163774078c8f4231900fdef2ba4fb6a02025-01-14T07:24:33ZzhoEditorial Department of Journal on CommunicationsTongxin xuebao1000-436X2024-06-014513114363977501Dual-verified secure localization method for unmanned intelligent vehiclesGU XiaodanXIA GuozhengSONG BingchenYANG MingLUO JunzhouUnmanned intelligent vehicles are exposed to high risks of network attack, hardware attack, operating system attack and software attack. They are susceptible to physical or remote security attacks, causing it to deviate from the delivery trajectory and fail the delivery task, or even be manipulated to disrupt normal operation of the factory. To address this problem, a dual-verified secure localization method for unmanned intelligent vehicles was proposed. The existing Wi-Fi network infrastructure was utilized by the vehicles for fingerprinting localization and a feature fusion strategy was designed to realize the dynamic fusion of Wi-Fi and magnetic field fingerprints. Multiple environmental monitoring points were deployed to collect the sound signals made by vehicles to calculate the position based on time difference of arrival and spatial segmentation method. Then the location reported by the vehicle was compared with the result of monitoring points for verification. Once an abnormal position was detected, an alert would be issued, ensuring the normal operation of the unmanned intelligent vehicles. The experimental results in the real indoor scenarios show that the proposed method can effectively track the positions of the target unmanned intelligent vehicle, and the positioning accuracy is better than existing benchmark algorithms.http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2024038/unmanned intelligent vehiclesindoor positioningWi-Fi fingerprintmagnetic field fingerprintacoustic source localization
spellingShingle GU Xiaodan
XIA Guozheng
SONG Bingchen
YANG Ming
LUO Junzhou
Dual-verified secure localization method for unmanned intelligent vehicles
Tongxin xuebao
unmanned intelligent vehicles
indoor positioning
Wi-Fi fingerprint
magnetic field fingerprint
acoustic source localization
title Dual-verified secure localization method for unmanned intelligent vehicles
title_full Dual-verified secure localization method for unmanned intelligent vehicles
title_fullStr Dual-verified secure localization method for unmanned intelligent vehicles
title_full_unstemmed Dual-verified secure localization method for unmanned intelligent vehicles
title_short Dual-verified secure localization method for unmanned intelligent vehicles
title_sort dual verified secure localization method for unmanned intelligent vehicles
topic unmanned intelligent vehicles
indoor positioning
Wi-Fi fingerprint
magnetic field fingerprint
acoustic source localization
url http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2024038/
work_keys_str_mv AT guxiaodan dualverifiedsecurelocalizationmethodforunmannedintelligentvehicles
AT xiaguozheng dualverifiedsecurelocalizationmethodforunmannedintelligentvehicles
AT songbingchen dualverifiedsecurelocalizationmethodforunmannedintelligentvehicles
AT yangming dualverifiedsecurelocalizationmethodforunmannedintelligentvehicles
AT luojunzhou dualverifiedsecurelocalizationmethodforunmannedintelligentvehicles