Noncontact healthy status sensing using low-power digital-IF Doppler radar

Hong Hong, Heng Zhao, Li Zhang, Chuanwei Ding, Xiaohua Zhu
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Abstract

Health status sensing is of great significance in early disease prevention, clinical treatment and back-end home care. Vital signs can not only provide physiological information but also reflect various health statuses of human subjects. Our emphasis is on discovering inner relationships between the Doppler radar-based noncontact vital sign detection and the health status of human subjects. The custom-designed low-power digital intermediate frequency (digital-IF) continuous-wave (CW) Doppler radar has been designed to capture vital signs with high accuracy and robustness. Then the compressed sensing (CS)-based method is proposed to enhance the resolution of the vital sign spectrum, and the synchrosqueezing transform (SST)-based algorithm is used to extract the instantaneous vital signs. Based on the digital-IF Doppler radar and the advanced signal processing algorithms, several health status sensing modules, including the breathing disorder recognition and sleep-stage estimation, have been realized by using advanced machine learning techniques. Laboratory and clinical experiments demonstrate the effectiveness of noncontact health status sensing using the proposed radar system.
使用低功率数字中频多普勒雷达的非接触健康状态传感
健康状态感知在疾病早期预防、临床治疗和家庭后端护理等方面具有重要意义。生命体征不仅能提供生理信息,还能反映人体的各种健康状况。我们的重点是发现基于多普勒雷达的非接触生命体征检测与人体健康状况之间的内在关系。定制设计的低功耗数字中频(digital- if)连续波(CW)多普勒雷达以高精度和鲁棒性捕获生命体征。然后提出了基于压缩感知(CS)的生命体征频谱分辨率提高方法,并采用基于同步压缩变换(SST)的算法提取瞬时生命体征。基于数字中频多普勒雷达和先进的信号处理算法,利用先进的机器学习技术实现了呼吸障碍识别和睡眠阶段估计等健康状态感知模块。实验室和临床实验证明了该雷达系统非接触式健康状态传感的有效性。
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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