MoRe-Fi: Motion-robust and Fine-grained Respiration Monitoring via Deep-Learning UWB Radar

Tianyue Zheng, Zhe Chen, Shujie Zhang, Chao Cai, Jun Luo
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引用次数: 43

Abstract

Crucial for healthcare and biomedical applications, respiration monitoring often employs wearable sensors in practice, causing inconvenience due to their direct contact with human bodies. Therefore, researchers have been constantly searching for contact-free alternatives. Nonetheless, existing contact-free designs mostly require human subjects to remain static, largely confining their adoptions in everyday environments where body movements are inevitable. Fortunately, radio-frequency (RF) enabled contact-free sensing, though suffering motion interference inseparable by conventional filtering, may offer a potential to distill respiratory waveform with the help of deep learning. To realize this potential, we introduce MoRe-Fi to conduct fine-grained respiration monitoring under body movements. MoRe-Fi leverages an IR-UWB radar to achieve contact-free sensing, and it fully exploits the complex radar signal for data augmentation. The core of MoRe-Fi is a novel variational encoder-decoder network; it aims to single out the respiratory waveforms that are modulated by body movements in a non-linear manner. Our experiments with 12 subjects and 66-hour data demonstrate that MoRe-Fi accurately recovers respiratory waveform despite the interference caused by body movements. We also discuss potential applications of MoRe-Fi for pulmonary disease diagnoses.
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MoRe-Fi:基于深度学习超宽带雷达的运动鲁棒和细粒度呼吸监测
呼吸监测对于医疗保健和生物医学应用至关重要,在实践中经常使用可穿戴传感器,由于它们与人体直接接触而造成不便。因此,研究人员一直在不断寻找无接触的替代品。尽管如此,现有的无接触设计大多要求人体受试者保持静止,这在很大程度上限制了它们在日常环境中的应用,因为身体运动是不可避免的。幸运的是,射频(RF)支持的无接触传感,尽管受到传统滤波不可分割的运动干扰,但可能提供了在深度学习的帮助下提取呼吸波形的潜力。为了实现这一潜力,我们引入MoRe-Fi在身体运动下进行细粒度呼吸监测。MoRe-Fi利用IR-UWB雷达实现无接触传感,并充分利用复杂的雷达信号进行数据增强。MoRe-Fi的核心是一种新型的变分编码器-解码器网络;它旨在挑出由身体运动以非线性方式调制的呼吸波形。我们对12名受试者进行了66小时的实验,结果表明,尽管受到身体运动的干扰,MoRe-Fi仍能准确地恢复呼吸波形。我们还讨论了MoRe-Fi在肺部疾病诊断中的潜在应用。
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