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Heart ID: Human Identification Based on Radar Micro-Doppler Signatures of the Heart Using Deep Learning

机译:心脏病:基于深入学习的雷达微多普勒签名的人为识别

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摘要

Human identification based on radar signatures of individual heartbeats is crucial in various applications, including user authentication in mobile devices, identification of escaped criminals, etc. Usually, optical systems employed to recognize humans are sensitive to ambient light environments, while radar does not have such a drawback, since it has high penetration and all-weather capability. Meanwhile, since micro-Doppler characteristics from the heart of different people are distinct and not easy to fake, it can be used for identification. In this paper, we employed a deep convolutional neural network (DCNN) and conventional supervised learning methods to realize heartbeat-based identification. First, the heartbeat signals were acquired by a Doppler radar and processed by short-time Fourier transform. Then, predefined features were extracted for the conventional supervised learning algorithms, while time−frequency graphs were directly inputted to the DCNN since the network had its own feature extraction part. It is shown that the DCNN could achieve average accuracy of 98.5% for identifying four people, and higher than 80% when the number of people was less than ten. For conventional supervised learning algorithms when identifying four people, the accuracy of the support vector machine (SVM) was 88.75%, and the accuracy of SVM−Bayes was 91.25%, while naive Bayes had the lowest accuracy of 80.75%.
机译:基于单个心跳的雷达签名的人体识别在各种应用中至关重要,包括移动设备中的用户认证,识别逃离的罪犯等。通常,用于识别人类的光学系统对环境光环境敏感,而雷达没有这样缺点,因为它具有高渗透和全天候能力。同时,由于来自不同人的心脏的微多普勒特征是不同的,并且不易伪造,它可以用于识别。在本文中,我们采用了深度卷积神经网络(DCNN)和传统的监督学习方法,以实现基于心跳的识别。首先,通过多普勒雷达获取心跳信号并通过短时傅里叶变换处理。然后,提取预定义的特征以提取传统的监督学习算法,而自网络具有其自己的特征提取部分,则将时间频率图直接输入到DCNN。结果表明,当人数不到十年时,DCNN可以达到98.5%的平均准确度为98.5%,而且当人数不到十分之一。对于传统的监督学习算法识别四人时,支持向量机(SVM)的准确性为88.75%,SVM-Bayes的准确性为91.25%,而幼稚贝叶斯的最低精度为80.75%。

著录项

  • 作者

    Peibei Cao; Weijie Xia; Yi Li;

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  • 年度 2019
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  • 原文格式 PDF
  • 正文语种 eng
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