Multivariate Signal Decomposition for Vital Signal Extraction using UWB Impulse Radar

Minhhuy Le, V. Luong, K. Nguyen, Tien Dat Le, Dang-Khanh Le
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Abstract

Remote sensing of vital signals, including respiration and heartbeat, is an important application used in smart homes, smart hospitals, or car driver assistant systems. Ultra-wideband impulse (UWB) radar recently became popular because of its ability to sense tiny motions from breathing and cardiac activities. The heartbeat signal is in order of magnitudes smaller than the respiration signal and is usually buried in a noisy signal. In this research, we propose a multivariate signal decomposition for efficiently extracting the heartbeat signal. The results show that the proposed method significantly improves the accuracy of the signal-to-noise ratio of the heartbeat signal compared to the recent advanced methods such as wavelet transform, singular spectral analysis, and multivariate singular spectral analysis. The proposed method also improves the stability of heartbeat monitoring in real-time applications.
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基于多变量信号分解的超宽带脉冲雷达生命信号提取
包括呼吸和心跳在内的生命信号的遥感是智能家居、智能医院或汽车驾驶辅助系统的重要应用。超宽带脉冲(UWB)雷达最近变得流行,因为它能够感知呼吸和心脏活动的微小运动。心跳信号比呼吸信号小一个数量级,通常被淹没在噪声信号中。在这项研究中,我们提出了一种多变量信号分解方法来有效地提取心跳信号。结果表明,与小波变换、奇异谱分析和多元奇异谱分析等先进方法相比,该方法显著提高了心跳信号信噪比的准确性。该方法还提高了实时应用中心跳监测的稳定性。
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