Noncontact Doppler radar unique identification system using neural network classifier on life signs

Ashikur Rahman, E. Yavari, V. Lubecke, O. Lubecke
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引用次数: 20

Abstract

A continuous-wave (CW) Doppler radar-based unique-identification system has been studied. Experiments have been performed using a neural network based classifier to uniquely identify individuals based on the variation in their breathing energy, frequency and patterns captured by the radar. Our work shows the possibility of non-contact unique identification where camera based system is not preferred. It is demonstrated that the system is capable of identifying individuals with more than 90% accuracy. This study also has impact on radar-based breathing pattern classification for health diagnostics.
非接触式多普勒雷达独特的生命体征识别系统采用神经网络分类器
研究了一种基于连续波多普勒雷达的唯一识别系统。实验使用基于神经网络的分类器,根据雷达捕捉到的呼吸能量、频率和模式的变化来唯一地识别个体。我们的工作显示了非接触式唯一识别的可能性,其中基于相机的系统不是首选的。实验证明,该系统能够以90%以上的准确率识别个体。本研究对基于雷达的呼吸模式分类进行健康诊断也有影响。
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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