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Main Authors: Wu, Kehan, Chen, Renqi, Wang, Haiyu, Ji, Chenqing, Zhu, Jiayuan, Wu, Guang
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2310.03297
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author Wu, Kehan
Chen, Renqi
Wang, Haiyu
Ji, Chenqing
Zhu, Jiayuan
Wu, Guang
author_facet Wu, Kehan
Chen, Renqi
Wang, Haiyu
Ji, Chenqing
Zhu, Jiayuan
Wu, Guang
contents Recent research has highlighted the detection of human respiration rate using commodity WiFi devices. Nevertheless, these devices encounter challenges in accurately discerning human respiration amidst the prevailing human motion interference encountered in daily life. To tackle this predicament, this paper introduces a passive sensing and communication system designed specifically for respiration detection in the presence of robust human motion interference. Operating within the 60.48 GHz band, the proposed system aims to detect human respiration even when confronted with substantial human motion interference within close proximity. Subsequently, a neural network is trained using the collected data by us to enable human respiration detection. The experimental results demonstrate a consistently high accuracy rate over 90\% of the human respiration detection under interference, given an adequate sensing duration. Finally, an empirical model is derived analytically to achieve the respiratory rate counting in 10 seconds.
format Preprint
id arxiv_https___arxiv_org_abs_2310_03297
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Passive Respiration Detection via mmWave Communication Signal Under Interference
Wu, Kehan
Chen, Renqi
Wang, Haiyu
Ji, Chenqing
Zhu, Jiayuan
Wu, Guang
Signal Processing
Recent research has highlighted the detection of human respiration rate using commodity WiFi devices. Nevertheless, these devices encounter challenges in accurately discerning human respiration amidst the prevailing human motion interference encountered in daily life. To tackle this predicament, this paper introduces a passive sensing and communication system designed specifically for respiration detection in the presence of robust human motion interference. Operating within the 60.48 GHz band, the proposed system aims to detect human respiration even when confronted with substantial human motion interference within close proximity. Subsequently, a neural network is trained using the collected data by us to enable human respiration detection. The experimental results demonstrate a consistently high accuracy rate over 90\% of the human respiration detection under interference, given an adequate sensing duration. Finally, an empirical model is derived analytically to achieve the respiratory rate counting in 10 seconds.
title Passive Respiration Detection via mmWave Communication Signal Under Interference
topic Signal Processing
url https://arxiv.org/abs/2310.03297