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Journal ArticleDOI

TensorBeat: Tensor Decomposition for Monitoring Multiperson Breathing Beats with Commodity WiFi

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TLDR
TensorBeat, a system to employ channel state information (CSI) phase difference data to intelligently estimate breathing rates for multiple persons with commodity WiFi devices, and can achieve high accuracy under different environments for multiperson breathing rate monitoring.
Abstract
Breathing signal monitoring can provide important clues for health problems. Compared to existing techniques that require wearable devices and special equipment, a more desirable approach is to provide contact-free and long-term breathing rate monitoring by exploiting wireless signals. In this article, we propose TensorBeat, a system to employ channel state information (CSI) phase difference data to intelligently estimate breathing rates for multiple persons with commodity WiFi devices. The main idea is to leverage the tensor decomposition technique to handle the CSI phase difference data. The proposed TensorBeat scheme first obtains CSI phase difference data between pairs of antennas at the WiFi receiver to create CSI tensors. Then canonical polyadic (CP) decomposition is applied to obtain the desired breathing signals. A stable signal matching algorithm is developed to identify the decomposed signal pairs, and a peak detection method is applied to estimate the breathing rates for multiple persons. Our experimental study shows that TensorBeat can achieve high accuracy under different environments for multiperson breathing rate monitoring.

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Citations
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TL;DR: This paper designs and implements the PhaseBeat system with off-the-shelf WiFi devices, and conducts an extensive experimental study to validate its performance, demonstrating the superior performance of PhaseBeat over existing approaches in various indoor environments.
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State-of-the-Art Internet of Things in Protected Agriculture.

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FarSense: Pushing the Range Limit of WiFi-based Respiration Sensing with CSI Ratio of Two Antennas

TL;DR: FarSense is the first real-time system that can reliably monitor human respiration when the target is far away from the WiFi transceiver pair and is believed to be the first system to enable through-wall respiration sensing with commodity WiFi devices.
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BiLoc: Bi-Modal Deep Learning for Indoor Localization With Commodity 5GHz WiFi

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Tensor Decompositions for Signal Processing Applications: From two-way to multiway component analysis

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Proceedings ArticleDOI

SpotFi: Decimeter Level Localization Using WiFi

TL;DR: SpotFi only uses information that is already exposed by WiFi chips and does not require any hardware or firmware changes, yet achieves the same accuracy as state-of-the-art localization systems.
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