MUSE-Fi: Contactless MUti-person SEnsing Exploiting Near-field Wi-Fi Channel Variation
Jingzhi Hu, Tianyue Zheng, Zhe Chen, Hongbo Wang, Jun Luo

TL;DR
MUSE-Fi is a novel Wi-Fi sensing system that leverages near-field channel variations to physically separate multiple persons, enabling accurate multi-person sensing without requiring high bandwidth radars.
Contribution
This work introduces the first Wi-Fi multi-person sensing system with physical separability based on near-field channel variation principles.
Findings
Successfully handles multi-person respiration monitoring.
Accurately detects gestures in multi-user scenarios.
Performs activity recognition with multiple subjects.
Abstract
Having been studied for more than a decade, Wi-Fi human sensing still faces a major challenge in the presence of multiple persons, simply because the limited bandwidth of Wi-Fi fails to provide a sufficient range resolution to physically separate multiple subjects. Existing solutions mostly avoid this challenge by switching to radars with GHz bandwidth, at the cost of cumbersome deployments. Therefore, could Wi-Fi human sensing handle multiple subjects remains an open question. This paper presents MUSE-Fi, the first Wi-Fi multi-person sensing system with physical separability. The principle behind MUSE-Fi is that, given a Wi-Fi device (e.g., smartphone) very close to a subject, the near-field channel variation caused by the subject significantly overwhelms variations caused by other distant subjects. Consequently, focusing on the channel state information (CSI) carried by the traffic in…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Millimeter-Wave Propagation and Modeling · Wireless Networks and Protocols
