Radar Target Recognition Based on Micro-Doppler Signatures Using Recurrent Neural Network

Tao Tang, Cai Wang, M. Gao
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引用次数: 3

Abstract

The micro-Doppler effect focuses on describing the detailed characteristics of moving targets and also plays a key role in the field of radar target recognition. In this paper, recurrent neural network (RNN) is used to classify the micro-Doppler signatures of different targets. RNN models are sensitive to temporal signals and thus can learn the necessary temporal dependence of the micro-Doppler signatures. This paper first constructs two-dimensional time-frequency distribution matrices by using short-time Fourier transformation (STFT). Then four types of RNN model are used in radar target classification, including standard RNN, long short-term memory (LSTM), attention-based RNN and attention-based LSTM. Experimental results based on L-band radar measured data show that those RNN models can capture the underlying features of micro-Doppler signatures and have good performance in the target classification experiments.
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基于微多普勒特征的递归神经网络雷达目标识别
微多普勒效应主要用于描述运动目标的细节特征,在雷达目标识别领域起着关键作用。本文采用递归神经网络(RNN)对不同目标的微多普勒特征进行分类。RNN模型对时间信号很敏感,因此可以学习到微多普勒特征的必要时间依赖性。本文首先利用短时傅里叶变换(STFT)构造二维时频分布矩阵。然后将标准RNN、长短期记忆(LSTM)、基于注意的RNN和基于注意的LSTM四种RNN模型应用于雷达目标分类。基于l波段雷达实测数据的实验结果表明,该RNN模型能够捕获微多普勒特征的潜在特征,在目标分类实验中具有良好的性能。
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