2D-Temporal Convolution for Target Recognition of SAR Sequence Image

Ruihang Xue, Xueru Bai
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引用次数: 2

Abstract

Although deep learning has greatly improved the target recognition accuracy of synthetic aperture radar (SAR), the characteristics of SAR continuous imaging are not fully utilized in available methods. This paper proposes a SAR sequence image target recognition network based on two-dimensional (2D) temporal convolution. The proposed network includes three stages: feature extraction, sequence modeling and classification. Firstly, convolutional networks are utilized to extract features of each image and obtain a sequence of feature vectors. Secondly, the sequence is fed into the 2D temporal convolution network and sequence modeling is performed. Finally, recognition result of the SAR sequence image is inferred by the softmax classifier. Compared with available methods, the proposed network shows better recognition accuracy on the moving and stationary target acquisition and recognition (MSTAR) dataset.
基于二维时间卷积的SAR序列图像目标识别
虽然深度学习极大地提高了合成孔径雷达(SAR)的目标识别精度,但现有方法并未充分利用SAR连续成像的特点。提出了一种基于二维时间卷积的SAR序列图像目标识别网络。该网络包括特征提取、序列建模和分类三个阶段。首先,利用卷积网络对每张图像进行特征提取,得到特征向量序列;其次,将序列输入到二维时间卷积网络中,进行序列建模;最后,利用softmax分类器对SAR序列图像进行识别。与现有方法相比,该网络在运动和静止目标采集与识别(MSTAR)数据集上具有更好的识别精度。
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