基于深度学习的SAR图像多特征目标检测方法

Tong Zheng, Jun Wang, Peng Lei
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引用次数: 5

摘要

针对合成孔径雷达(SAR)的目标检测,传统的方法是基于手工特征提取和分类器。此外,基于深度学习的方法是近年来的研究热点。然而,它们的缺点也不容忽视,即传统方法的检测精度有待提高,深度学习特征难以解释。为了克服这些问题,本文提出了一种多特征的SAR图像目标检测方法。它由两个并行子通道组成。在这些通道中分别提取DL特征和手工特征。本文采用卷积神经网络(CNN)模型对原始SAR图像进行深度学习特征的捕获。深度神经网络(NN)用于进一步分析手工制作的特征。此外,两个子通道特征在主通道中连接在一起。经过多层网络处理,提取融合的深度特征。最后,应用softmax分类器对舰船目标进行识别。基于Sentinel-1 SAR数据的实验结果表明,本文提出的方法提高了探测性能。
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Deep learning based target detection method with multi-features in SAR imagery
In view of synthetic aperture radar (SAR) target detection, traditional methods are based on hand-crafted feature extraction and classifier. Besides, deep learning (DL) based methods are research hotspots in recent year. However, their shortcomings cannot be neglected, i.e. detection accuracy of traditional method needs to be improved and DL features are difficult to interpret. To overcome these problems, a target detection method with multi-features in SAR imagery is proposed in this paper. It consists of two parallel sub-channels. DL features and hand-crafted features are extracted in these channels, respectively. Here, convolutional neural network (CNN) model is applied to capture DL features of original SAR images. Deep neural network (NN) is used to further analyze hand-crafted features. Furthermore, two sub-channel features are concatenated together in the main channel. After several layers network processing, fused deep features are extracted. Finally, softmax classifier is applied to discriminate ship target. According to the experiments based on Sentinel-1 SAR data, we can find that the detection performance is improved by the proposed method.
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