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Auteurs principaux: Liu, Junshuo, Huang, Yunlong, Yang, Wei, Li, Zhe, Xiong, Rujing, Mi, Tiebin, Shi, Xin, Qiu, Robert C.
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2402.17277
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author Liu, Junshuo
Huang, Yunlong
Yang, Wei
Li, Zhe
Xiong, Rujing
Mi, Tiebin
Shi, Xin
Qiu, Robert C.
author_facet Liu, Junshuo
Huang, Yunlong
Yang, Wei
Li, Zhe
Xiong, Rujing
Mi, Tiebin
Shi, Xin
Qiu, Robert C.
contents Human activity recognition (HAR) holds significant importance in smart homes, security, and healthcare. Existing systems face limitations because of the insufficient spatial diversity provided by a limited number of antennas. Furthermore, inefficiencies in noise reduction and feature extraction from sensing data pose challenges to recognition performance. This study presents a reconfigurable intelligent surface (RIS)-assisted passive human activity recognition (RISAR) method, compatible with commercial Wi-Fi devices. RISAR leverages a RIS to enhance the spatial diversity of Wi-Fi signals, effectively capturing a wider range of information distributed across the spatial domain. A novel high-dimensional factor model based on random matrix theory is proposed to address noise reduction and feature extraction in the temporal domain. A dual-stream spatial-temporal attention network model is developed to assign variable weights to different characteristics and sequences, mimicking human cognitive processes in prioritizing essential information. Experimental analysis shows that RISAR significantly outperforms existing HAR methods in accuracy and efficiency, achieving an average accuracy of 97.26%. These findings underscore RISAR's adaptability and potential as a robust activity recognition solution in real environments.
format Preprint
id arxiv_https___arxiv_org_abs_2402_17277
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle RISAR: RIS-assisted Human Activity Recognition with Commercial Wi-Fi Devices
Liu, Junshuo
Huang, Yunlong
Yang, Wei
Li, Zhe
Xiong, Rujing
Mi, Tiebin
Shi, Xin
Qiu, Robert C.
Systems and Control
Human activity recognition (HAR) holds significant importance in smart homes, security, and healthcare. Existing systems face limitations because of the insufficient spatial diversity provided by a limited number of antennas. Furthermore, inefficiencies in noise reduction and feature extraction from sensing data pose challenges to recognition performance. This study presents a reconfigurable intelligent surface (RIS)-assisted passive human activity recognition (RISAR) method, compatible with commercial Wi-Fi devices. RISAR leverages a RIS to enhance the spatial diversity of Wi-Fi signals, effectively capturing a wider range of information distributed across the spatial domain. A novel high-dimensional factor model based on random matrix theory is proposed to address noise reduction and feature extraction in the temporal domain. A dual-stream spatial-temporal attention network model is developed to assign variable weights to different characteristics and sequences, mimicking human cognitive processes in prioritizing essential information. Experimental analysis shows that RISAR significantly outperforms existing HAR methods in accuracy and efficiency, achieving an average accuracy of 97.26%. These findings underscore RISAR's adaptability and potential as a robust activity recognition solution in real environments.
title RISAR: RIS-assisted Human Activity Recognition with Commercial Wi-Fi Devices
topic Systems and Control
url https://arxiv.org/abs/2402.17277