Argosleep:从商用毫米波设备监测睡眠姿势

Aakriti Adhikari, Sanjib Sur
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引用次数: 0

摘要

我们提出了Argosleep,这是一个基于毫米波(mmWave)无线传感器的睡眠姿势监测系统,可以预测人在睡眠期间身体关节的3D位置。Argosleep利用深度学习模型和人体解剖特征知识来解决现有毫米波设备中的低分辨率、镜面和混叠问题。Argosleep通过从数千个现有样本中学习毫米波反射信号和身体姿势之间的关系来建立模型。由于实际睡眠中也会出现突然的翻身,这可能会给姿势预测带来误差,因此Argosleep设计了一个基于反射信号的状态机,将睡眠状态分为休息状态和翻身状态,只在休息状态下预测姿势。我们使用COTS毫米波设备收集的真实数据对8名不同年龄、性别和身高的志愿者进行了不同的睡眠姿势评估Argosleep。我们观察到,Argosleep可以准确识别翻转事件,并预测身体关节的3D位置,其精度与现有的基于视觉的系统相当,从而释放了毫米波系统在隐私无创家庭医疗应用中的潜力。
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Argosleep: Monitoring Sleep Posture from Commodity Millimeter-Wave Devices
We propose Argosleep, a millimeter-wave (mmWave) wireless sensors based sleep posture monitoring system that predicts the 3D location of body joints of a person during sleep. Argosleep leverages deep learning models and knowledge of human anatomical features to solve challenges with low-resolution, specularity, and aliasing in existing mmWave devices. Argosleep builds the model by learning the relationship between mmWave reflected signals and body postures from thousands of existing samples. Since practical sleep also involves sudden toss-turns, which could introduce errors in posture prediction, Argosleep designs a state machine based on the reflected signals to classify the sleeping states into rest or toss-turn, and predict the posture only during the rest states. We evaluate Argosleep with real data collected from COTS mmWave devices for 8 volunteers of diverse ages, gender, and height performing different sleep postures. We observe that Argosleep identifies the toss-turn events accurately and predicts 3D location of body joints with accuracy on par with the existing vision-based system, unlocking the potential of mmWave systems for privacy-noninvasive at-home healthcare applications.
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