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Signal Separation and Tracking Algorithm for Multi-Person Vital Signs by Using Doppler Radar

机译:用多普勒雷达对多人生命体征的信号分离与跟踪算法

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摘要

Noninvasive monitoring is an important Internet-of-Things application, which is made possible with the advances in radio-frequency based detection technologies. Existing techniques however rely on the use of antenna array and/or frequency modulated continuous wave radar to detect vital signs of multiple adjacent objects. Antenna size and limited bandwidth greatly limit the applicability. In this paper, we propose our system termed ‘DeepMining’ which is a single-antenna, narrowband Doppler radar system that can simultaneously track the respiration and heartbeat rates of multiple persons with high accuracy. DeepMining uses a number of signal observations over a period of time as input and returns the trajectory of the respiration and heartbeat rates of each person. The extraction is based on frequency separation algorithms using successive signal cancellation. The proposed system is implemented using the self-injection locking radar architecture and tested in a series of experiments, showing accuracies of 90% and 85% for two and three objects, respectively, even for closely located persons.
机译:非侵入性监测是一个重要的内容互联网应用,可以随着基于射频的检测技术的进步而实现。然而,现有技术依赖于使用天线阵列和/或频率调制的连续波雷达来检测多个相邻物体的生命符号。天线尺寸和有限的带宽极大限制了适用性。在本文中,我们提出了我们的系统称为“深入”,它是一个单天线,窄带多普勒雷达系统,可以同时以高精度跟踪多人的呼吸和心跳率。 DeepMining在一段时间内使用多个信号观察,作为输入,返回每个人的呼吸和心跳率的轨迹。提取基于使用连续信号消除的频率分离算法。所提出的系统采用自喷锁定雷达架构实施,并在一系列实验中进行测试,分别为两个和三个物体的精度为90%和85%,即使是密切的人员。

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