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HeadSee: Device-free head gesture recognition with commodity RFID

Research shows that the head posture not only contains important interpersonal information but also is an external manifestation of human psychological activities. Head posture plays an important role in automotive safety, smart home, and other intelligent environments. Rf-based posture recognition...

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Published in:Peer-to-peer networking and applications 2022-05, Vol.15 (3), p.1357-1369
Main Authors: Chen, Kai, Wang, Fuwei, Li, Miaoyu, Liu, Baoying, Chen, Hao, Chen, Feng
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cited_by cdi_FETCH-LOGICAL-c319t-c5011a05bc24c0f8a9c0f281081bdf09afb765f44235cf6f4af67a6b33d9dd0a3
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container_title Peer-to-peer networking and applications
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creator Chen, Kai
Wang, Fuwei
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Chen, Hao
Chen, Feng
description Research shows that the head posture not only contains important interpersonal information but also is an external manifestation of human psychological activities. Head posture plays an important role in automotive safety, smart home, and other intelligent environments. Rf-based posture recognition method provides a non-contact and privacy protection method to detect and monitor human activities. However, how to separate weak activity state information from reflected signals has been a big challenge for this kind of method. This paper proposes HeadSee, a passive human head gesture sensing system built on a cheap commodity RFID device. Without attaching any device to the human body, HeadSee using ICA extracts the weak reflected RF signals from the human body for gesture sensing. And then HeadSee carefully models the head movement by utilizing the signal’s phase/RSS (received signal strength) changes and successfully quantifies the head gesture with continuous sequences of movement states. Extensive experiments show that even with interfering movements from other body parts, HeadSee can still achieve around 91% recognition accuracy of the head gestures.
doi_str_mv 10.1007/s12083-021-01126-1
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subjects Body parts
Cameras
Commodities
Communications Engineering
Computer Communication Networks
Engineering
Gesture recognition
Head movement
Human body
Information Systems and Communication Service
Internet of Things
Methods
Networks
Peer to peer computing
Privacy
Radio frequency identification
Sensors
Signal strength
Signal,Image and Speech Processing
Smart buildings
title HeadSee: Device-free head gesture recognition with commodity RFID
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