ECG Signal Detection Method Based on Millimeter Wave Radar

Tian Li, Guangyang Wan, Linsheng Liu, Tong Zhu, Peng-Chu Wang
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引用次数: 1

Abstract

In the medical field, the detection of breathing and heartbeat signals is very important. This paper analyzes and verifies a method for detecting and estimating characteristic parameters of heartbeat signals based on millimeter wave radar, and analyzes the effect of decomposing respiratory and heartbeat signals based on wavelet changes and empirical mode decomposition. Perform range FFT on the radar echo signal to obtain the range-time image of the target, and then estimate the center of the constellation based on the method.The least squares approximation algorithm based on iterative weighting is used to eliminate the static clutter of the actual FMCW radar signal. Then the target is detected in the azimuth by the capon algorithm, and the CFAR detection is performed to extract the echo signal on the unit of distance where the target is located. The target signal is phase demodulated to obtain the phase information of micro-motions such as breathing and heartbeat. The wavelet transform is used to decompose the breathing and heartbeat signals from the phase information, and the short-term average amplitude difference function frequency estimation method is used to estimate the frequency of breathing and heartbeat.
基于毫米波雷达的心电信号检测方法
在医学领域,呼吸和心跳信号的检测是非常重要的。分析并验证了一种基于毫米波雷达的心跳信号特征参数检测与估计方法,分析了基于小波变换和经验模态分解的呼吸信号和心跳信号分解效果。对雷达回波信号进行距离FFT,得到目标的距离-时间图像,然后根据该方法估计出星座中心。采用基于迭代加权的最小二乘逼近算法消除了实际FMCW雷达信号的静态杂波。然后利用capon算法对目标进行方位角检测,并进行CFAR检测,提取目标所在单位距离上的回波信号。对目标信号进行相位解调,得到呼吸、心跳等微运动的相位信息。采用小波变换对呼吸和心跳信号进行相位信息分解,采用短期平均幅值差函数频率估计法对呼吸和心跳频率进行估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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