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Robust SAR Automatic Target Recognition Based on Transferred MS-CNN with L2-Regularization

机译:基于L2正则化的传输MS-CNN的鲁棒SAR自动目标识别

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Though Synthetic Aperture Radar (SAR) Automatic Target Recognition (ATR) via Convolutional Neural Networks (CNNs) has made huge progress toward deep learning, some key issues still remain unsolved due to the lack of sufficient samples and robust model. In this paper, we proposed an efficient transferred Max-Slice CNN (MS-CNN) with L2-Regularization for SAR ATR, which could enrich the features and recognize the targets with superior performance. Firstly, the data amplification method is presented to reduce the computational time and enrich the raw features of SAR targets. Secondly, the proposed MS-CNN framework with L2-Regularization is trained to extract robust features, in which the L2-Regularization is incorporated to avoid the overfitting phenomenon and further optimizing our proposed model. Thirdly, transfer learning is introduced to enhance the feature representation and discrimination, which could boost the performance and robustness of the proposed model on small samples. Finally, various activation functions and dropout strategies are evaluated for further improving recognition performance. Extensive experiments demonstrated that our proposed method could not only outperform other state-of-the-art methods on the public and extended MSTAR dataset but also obtain good performance on the random small datasets.
机译:虽然合成孔径雷达(SAR)自动目标识别(ATR)通过卷积神经网络(CNNS)对深度学习进行了巨大进展,但由于缺乏足够的样本和鲁棒模型,一些关键问题仍然保持未解决。在本文中,我们提出了一种有效的转移的MAX-Slice CNN(MS-CNN),对于SAR ATR,可以丰富特征,​​并识别具有卓越性能的目标。首先,提出了数据放大方法以减少计算时间并丰富SAR目标的原始特征。其次,培训具有L2正则化的提出的MS-CNN框架以提取鲁棒特征,其中结合了L2正则化以避免过度拟合现象并进一步优化我们所提出的模型。第三,引入了转移学习,以增强特征表示和歧视,这可以提高所提出的小型样本模型的性能和鲁棒性。最后,评估各种激活功能和丢弃策略,以进一步提高识别性能。广泛的实验表明,我们的建议方法不仅可以在公共和扩展MSTAR数据集上突出其他最先进的方法,还可以在随机小数据集中获得良好的性能。

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