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首页> 外文期刊>IEEE sensors journal >Using an End-to-End Convolutional Network on Radar Signal for Human Activity Classification
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Using an End-to-End Convolutional Network on Radar Signal for Human Activity Classification

机译:使用端到端卷积网络对人类活动分类的雷达信号

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摘要

Almost all existing methods for human activity classification based on micro-Doppler radar first manually convert the raw radar signal into a spectrogram using a short time Fourier transform. Then, the spectrogram features are either manually extracted using hand-crafted feature engineering or automatically extracted using deep convolutional networks and fed into a classifier such as a support vector machine, k-nearest neighbor or multi-layer perceptron. However, the optimality of this two-step process is limited by the use of spectrograms, which are a hand-crafted representation. In this paper, the first time truly end-to-end deep network that incorporates the signal representation process into the network is proposed. In the proposed network, which is called RadarNet, two one-dimensional convolutional layers are used to replace short time Fourier transform to obtain a learned radar signal representation. The experimental results show that the proposed RadarNet can achieve 96.35% accuracy in human sleep activity classification and 96.31% accuracy in human daily activity classification, which is 1.96% and 3.26% higher than those of the best existing method, respectively.
机译:基于微多普勒雷达的人类活动分类几乎所有现有方法首先使用短时间傅里叶变换手动将原始雷达信号转换为频谱图。然后,使用手工制作的特征工程手动提取频谱图特征,或者使用深卷积网络自动提取,并将其馈入诸如支持向量机,k最近邻居或多层Perceptron之类的分类器中。然而,这种两步过程的最优性受到使用谱图的限制,这是一种手工制作的表示。在本文中,提出了一种将信号表示过程结合到网络中的真正端到端的深网络。在所提出的网络中称为RADARNET,两个一维卷积层用于替换短时间傅里叶变换以获得学习的雷达信号表示。实验结果表明,拟议的RADARNET分别在人类日常活动分类中达到96.35%的精度,分别比最佳现有方法高出1.96%和3.26%。

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