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Joint of discrete curvelet transform and nonlocal tensor sparse regularization for SAR image despeckling

机译:不同曲线变换的关节和SAR图像检测的非识别张量稀疏正规化

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This paper proposes a new joint sparsity regularization model (JSRM) for synthetic aperture radar (SAR) image despeckling by characterizing local sparsity and nonlocal self-similarity of SAR images simultaneously. The proposed model contains a data fidelity term and two regularization terms. One of the two regularization terms employs the discrete curvelet transform to depict the local smoothness of the SAR image, and the other one employs a tensor sparse transform of the three-dimensional (3D) tensor generated by stacking similar SAR image patches. The joint employment of these two regularization terms, which has not been utilized in existing methods of SAR image despeckling yet, aims to produce better despeckling performance and preserve more geometrical features of SAR images. To address the optimization problem in the proposed model, a new efficient algorithm is derived based on the split Bregman iterations framework. Experimental results show that the proposed model considerably outperforms some conventional and state-of-the-art techniques in terms of both subjective visual assessment of image quality and objective evaluation.
机译:本文提出了一种新的联合稀疏正则化模型(JSRM),用于合成孔径雷达(SAR)图像检测,通过同时表征SAR图像的局部稀疏性和非局部自相似性。所提出的模型包含数据保真术语和两个正则化术语。两个正则化术语之一采用离散的Curvelet变换来描绘SAR图像的局部平滑度,另一个是通过堆叠类似的SAR图像贴片产生的三维(3D)张量的张量稀疏变换。这两个正规化条款的联合就业尚未在现有的SAR Image Opreckling方法中使用,旨在产生更好的检测性能,并保持SAR图像的更多几何特征。为了解决所提出的模型中的优化问题,基于拆分Brogman迭代框架导出了一种新的高效算法。实验结果表明,在图像质量和客观评估的主观视觉评估方面,该建议模型在既有主观视觉评估方面相当优于一些常规和最先进的技术。

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