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Inverse synthetic aperture radar imaging exploiting dictionary learning

机译:逆综合孔径雷达成像利用词典学习

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We consider the Inverse synthetic aperture radar (ISAR) imaging with under-sampled data in the framework of compressive sensing (CS) theory. In the existing studies of CS based ISAR imaging or sparse ISAR imaging, the scene to be imaged is simply assumed to be sparse or existing transforms, such as the wavelet transform, etc. are employed to sparsely represent certain features of the target. The imaging quality is actually limited by the sparse representation of the scene, which in the cases aforementioned may not be fully appropriate to the scene to be imaged. In this paper, we exploits the on-line and off-line dictionary learning (DL) techniques to obtain the sparse representation of the scene, respectively and then incorporate such learned dictionaries into the image reconstruction. We demonstrate the performance of the proposed DL based imaging methods using real ISAR data. The results show that the adaptive on-line dictionary learnt from the current data to be processed and the off-line dictionary learned from the previously available ISAR data are both able to better sparsely represent the targets leading to better imaging results and the off-line DL based imaging method works even better.
机译:我们考虑逆合孔径雷达(ISAR)成像在压缩感测(CS)理论框架中具有欠采样数据。在基于ISAR成像或稀疏ISAR成像的现有研究中,简单地假设要成像的场景是稀疏的或现有的变换,例如小波变换等被采用稀疏地代表目标的某些特征。成像质量实际上受到场景的稀疏表示的限制,在上述情况下可能不完全适合于要成像的场景。在本文中,我们利用在线和离线词典学习(DL)技术以分别获得场景的稀疏表示,然后将这些学习的词典结合到图像重建中。我们使用真实的ISAR数据展示所提出的基于DL的成像方法的性能。结果表明,从要处理的当前数据和从先前可用的ISAR数据中学到的自适应在线词典以及从先前可用的ISAR数据中学到的离线词典都能够更好地稀疏地代表导致更好的成像结果和离线的目标基于DL的成像方法更好地工作。

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