Radarcardiograph Signal Modeling and Time-Frequency Analysis

Isabella Lenz, Yu Rong, D. Bliss
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引用次数: 3

Abstract

In this paper, we delve deeper into recent advancements in radar based biomedical measurements that capture fine movements associated with human heart sounds. We call this measurement the Radarcardiograph (RCG). We analyze the RCG of three subjects to identify distinguishing time and frequency components of the signal. We introduce a parametric signal model as a function of the identified characteristic features. From there, we simultaneously collect and time synchronize the RCG with conventional contact based cardiac interval measurements. We then compare these signals using the Short Time Fourier Transform (STFT), Continuous Wavelet Transform (CWT) and Cochleogram (CLG) for time-frequency analysis. We comment on the similarities and difference of the signals, using the model as reference. Our results improve current understanding of radar based heart sound measurements and provide further validation that radar can be used for non-contact technology heart sound monitoring. We identify limitations in radar based heart sounds measurements. Namely, limited signal quality in the wireless channel, reduced recovered frequency range and weak high frequency components. However, such problem can be addressed via advanced denoising algorithms and system level optimization.
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雷达心电信号建模与时频分析
在本文中,我们深入研究了基于雷达的生物医学测量的最新进展,这些测量可以捕捉与人类心音相关的细微运动。我们称之为雷达心动图(RCG)。我们分析了三个受试者的RCG,以识别信号的可区分的时间和频率成分。我们引入一个参数信号模型作为识别的特征特征的函数。从那里,我们同时收集和时间同步RCG与传统的基于接触的心脏间隔测量。然后,我们使用短时傅里叶变换(STFT)、连续小波变换(CWT)和耳蜗图(CLG)对这些信号进行时频分析。以该模型为参考,对信号的异同进行了评价。我们的研究结果提高了目前对基于雷达的心音测量的理解,并进一步验证了雷达可以用于非接触式心音监测技术。我们发现了基于雷达的心音测量的局限性。即无线信道中的信号质量受限,恢复频率范围减小,高频成分较弱。然而,这种问题可以通过先进的去噪算法和系统级优化来解决。
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