Human Detection by Deep Neural Networks Recognizing Micro-Doppler Signals of Radar

Jihoon Kwon, Seungeui Lee, Nojun Kwak
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引用次数: 13

Abstract

The purpose of this paper is to show the effectiveness of Deep neural networks (DNN) for recognizing the micro-Doppler radar signals generated by human walking and background noises. To show this, we collected various micro-Doppler signals considering the actual human walking motion and background noise characteristics. Unlike the previous researches that required a complex feature extraction process, we directly use the FFT result of the input signal as a feature vector without any additional pre-processing. This technique helps not to use heuristic approaches to get a meaningful feature vector. We designed two types of DNN classifier. The first is the binary classifier to classify human walking Doppler signals and background noises. The second is the multiclass classifier that is roughly able to recognize a circumstance of a place as well as human walking Doppler signals. DNN for the binary classifier showed about 97.5% classification accuracy for the test dataset and DNN(ReLU) for the multiclass classifier showed about 95.6% accuracy.
雷达微多普勒信号的深度神经网络人体检测
本文的目的是展示深度神经网络(DNN)识别人体行走和背景噪声产生的微多普勒雷达信号的有效性。为了证明这一点,我们收集了各种微多普勒信号,考虑到人类的实际行走运动和背景噪声特征。不同于以往的研究需要复杂的特征提取过程,我们直接使用输入信号的FFT结果作为特征向量,不需要任何额外的预处理。这种技术有助于不使用启发式方法来获得有意义的特征向量。我们设计了两种DNN分类器。首先是二值分类器,对人体行走的多普勒信号和背景噪声进行分类。第二种是多类分类器,它大致能够识别一个地方的环境以及人类行走的多普勒信号。二元分类器的DNN(ReLU)对测试数据集的分类准确率约为97.5%,多类分类器的DNN(ReLU)的分类准确率约为95.6%。
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