High dynamic range DC coupled CW Doppler radar for accurate respiration characterization and identification

Ashikur Rahman, V. Lubecke, E. Yavari, Xiaomeng Gao, O. Boric-Lubecke
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引用次数: 10

Abstract

Accurate radar characterization of respiration can allow sleep diagnostics, and unique identification. A low distortion DC coupled system with high signal to noise ratio is required for such characterization and classification. This is especially critical with small signals as with through wall measurements with poor signal to noise ratio (SNR). This paper proposes a technique to improve signal to noise ratio by DC offset management and using the method of zooming in the fractions of the respiratory cycle waveform. Experimental results show a gain increment of 195 and 42% reduction of error in unique identification by complexity analysis techniques. Unique identification of human subjects behind walls has many potential applications such as, security, health monitoring, IoT applications, and virtual reality, and this technique can also benefit respiratory health diagnostics applications.
高动态范围直流耦合连续波多普勒雷达精确呼吸表征和识别
准确的雷达呼吸特征可以进行睡眠诊断,并进行独特的识别。这样的表征和分类需要具有高信噪比的低失真直流耦合系统。这对于小信号尤其重要,因为穿墙测量的信噪比(SNR)很差。本文提出了一种利用直流偏置管理和放大呼吸周期波形分量的方法来提高信噪比的技术。实验结果表明,采用复杂度分析技术进行唯一性识别的增益增加了195,误差降低了42%。墙后人体主体的独特识别具有许多潜在的应用,如安全,健康监控,物联网应用和虚拟现实,该技术还可以有益于呼吸健康诊断应用。
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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