An adaptive wireless passive human detection via fine-grained physical layer information
Wireless device-free passive human detection is a key enabler for a range of indoor location-based services such as asset security, emergency responses, privacy-preserving children and elderly monitoring, etc. Since the feature of received signal varies with different multipath propagation condition...
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sg-smu-ink.sis_research-55452019-12-26T09:08:07Z An adaptive wireless passive human detection via fine-grained physical layer information GONG, Liangyi YANG, Wu ZHOU, Zimu MAN, Dapeng CAI, Haibin ZHOU, Xiancun YANG, Zheng Wireless device-free passive human detection is a key enabler for a range of indoor location-based services such as asset security, emergency responses, privacy-preserving children and elderly monitoring, etc. Since the feature of received signal varies with different multipath propagation conditions, an labor-intensive on-site calibration procedure is almost indispensable to decide the optimal scenario-specific threshold for human detection. Such overhead, however, impedes readily and fast deployment of wireless device-free human detection systems in practical indoor environments. In this work, we explore PHY layer multipath profiling information to extract a novel quantitative metric Ks as an indicator for link sensitivity, and further exploit a linear detection threshold prediction model. We design an adaptive device-free human detection scheme that automatically predicts the detection threshold according to the richness of multipath propagation within monitored areas. We implement our scheme with commodity WiFi infrastructure and evaluate it in typical office environments. Extensive experimental results show that our scheme yields comparative performance with the state-of-the-art, yet requires no on-site threshold calibration. 2016-03-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/4542 info:doi/10.1016/j.adhoc.2015.09.005 https://ink.library.smu.edu.sg/context/sis_research/article/5545/viewcontent/1_s20_S1570870515002127_main.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Device-free passive Human detection PHY layer information Multipath propagation Software Engineering |
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Device-free passive Human detection PHY layer information Multipath propagation Software Engineering GONG, Liangyi YANG, Wu ZHOU, Zimu MAN, Dapeng CAI, Haibin ZHOU, Xiancun YANG, Zheng An adaptive wireless passive human detection via fine-grained physical layer information |
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Wireless device-free passive human detection is a key enabler for a range of indoor location-based services such as asset security, emergency responses, privacy-preserving children and elderly monitoring, etc. Since the feature of received signal varies with different multipath propagation conditions, an labor-intensive on-site calibration procedure is almost indispensable to decide the optimal scenario-specific threshold for human detection. Such overhead, however, impedes readily and fast deployment of wireless device-free human detection systems in practical indoor environments. In this work, we explore PHY layer multipath profiling information to extract a novel quantitative metric Ks as an indicator for link sensitivity, and further exploit a linear detection threshold prediction model. We design an adaptive device-free human detection scheme that automatically predicts the detection threshold according to the richness of multipath propagation within monitored areas. We implement our scheme with commodity WiFi infrastructure and evaluate it in typical office environments. Extensive experimental results show that our scheme yields comparative performance with the state-of-the-art, yet requires no on-site threshold calibration. |
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GONG, Liangyi YANG, Wu ZHOU, Zimu MAN, Dapeng CAI, Haibin ZHOU, Xiancun YANG, Zheng |
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GONG, Liangyi YANG, Wu ZHOU, Zimu MAN, Dapeng CAI, Haibin ZHOU, Xiancun YANG, Zheng |
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GONG, Liangyi |
title |
An adaptive wireless passive human detection via fine-grained physical layer information |
title_short |
An adaptive wireless passive human detection via fine-grained physical layer information |
title_full |
An adaptive wireless passive human detection via fine-grained physical layer information |
title_fullStr |
An adaptive wireless passive human detection via fine-grained physical layer information |
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An adaptive wireless passive human detection via fine-grained physical layer information |
title_sort |
adaptive wireless passive human detection via fine-grained physical layer information |
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Institutional Knowledge at Singapore Management University |
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2016 |
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https://ink.library.smu.edu.sg/sis_research/4542 https://ink.library.smu.edu.sg/context/sis_research/article/5545/viewcontent/1_s20_S1570870515002127_main.pdf |
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