基于小波分析和深度学习的生物雷达跌倒检测

L. Anishchenko, E. Smirnova
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引用次数: 1

摘要

生物放射定位是一种远程检测生物目标生命体征的方法。特别是,它可用于老年人的非接触式跌倒检测。本文研究了小波变换与深度学习技术在生物雷达数据检测中的结合应用。将生物雷达信号的时频表示作为小波变换系数的绝对值作为卷积神经网络的输入数据。AlexNet的网络架构被用来解决检测跌倒的问题。五名志愿者在真实的环境条件下对所提出的摔倒和未摔倒分类方法进行了测试。该方法的准确率为95%,科恩kappa值为91%。
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Fall Detection with Bioradar Using Wavelet Analysis and Deep Learning
Bioradiolocation is a remote method for biological object vital signs detection. In particular, it may be used for noncontact fall detection in elderly. The present paper considers the combined usage of wavelet transform and deep learning techniques in fall detection by means of bioradar data processing. The time-frequency representation of the bio-radar signal representing the absolute values of the wavelet transform coefficients was used as input data for convolutional neural network. The network architecture of AlexNet has been adapted to solve the problem of detecting falls. The proposed method for the fall – non-fall classification was tested on the data gathered in realistic surrounding conditions by five volunteers. The proposed method has the accuracy of 95 % and Cohen’s kappa of 91 %.
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