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Radar Application of Deep Neural Networks for Recognizing Micro-Doppler Radar Signals by Human Walking and Background Noise

机译:深度神经网络的雷达应用在人类步行和背景噪声识别微多普勒雷达信号中的应用

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The purpose of this paper is to show the radar application of the deep neural networks for recognizing the micro-Doppler radar signals generated by human walking and background noises. We collected various signals considering the actual human walking motion and background noise characteristics. In this paper, unlike the previous researches that required complicated feature extractions, we directly use the FFT results of the input signal as the feature vectors. This technique helps not to use heuristic approaches to get meaningful feature vectors. We designed and analyzed MLP (Multilayer perceptron) and DNN for multiclass classifiers. According to the experimental result, the classification accuracy of MLP was measured as 89.8% for the test dataset. The classification accuracy of DNN was analyzed as 97.2% for the test dataset.
机译:本文的目的是展示深层神经网络在雷达中的应用,以识别人的步行和背景噪声产生的微多普勒雷达信号。考虑到实际的人类步行运动和背景噪声特征,我们收集了各种信号。在本文中,与先前的研究要求复杂的特征提取不同,我们直接将输入信号的FFT结果用作特征向量。此技术有助于避免使用启发式方法来获取有意义的特征向量。我们针对多层分类器设计并分析了MLP(多层感知器)和DNN。根据实验结果,测试数据集的MLP分类精度为89.8%。对于测试数据集,DNN的分类准确性分析为97.2%。

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