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High-quality Image Restoration Using Low-Rank Patch Regularization and Global Structure Sparsity

机译:使用低秩补丁正则化和全局结构稀疏性的高质量图像恢复

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摘要

In recent years, approaches based on nonlocal self-similarity and global structure regularization have led to significant improvements in image restoration. Nonlocal self-similarity exploits the repetitiveness of small image patches as a powerful prior in the reconstruction process. Likewise, global structure regularization is based on the principle that the structure of objects in the image is represented by a relatively small portion of pixels. Enforcing this structural information to be sparse can thus reduce the occurrence of reconstruction artifacts. So far, most image restoration approaches have considered one of these two strategies, but not both. This paper presents a novel image restoration method that combines nonlocal self-similarity and global structure sparsity in a single efficient model. Group of similar patches are reconstructed simultaneously, via an adaptive regularization technique based on the weighted nuclear norm. Moreover, global structure is preserved using an innovative strategy, which decomposes the image into a smooth component and a sparse residual, the latter regularized using l1norm. An optimization technique, based on the alternating direction method of multipliers algorithm, is used to recover corrupted images efficiently. The performance of the proposed method is evaluated on two important image restoration tasks: image completion and super-resolution. Experimental results show our method to outperform state-of-the-art approaches for these tasks, for various types and levels of image corruption.
机译:近年来,基于非局部自相似性和全局结构正则化的方法已显着改善了图像恢复。非局部自相似性将小图像块的重复性作为重建过程中的有力先验。同样,全局结构正则化基于以下原理:图像中对象的结构由相对较小的像素部分表示。因此,使该结构信息稀疏可以减少重建伪像的发生。到目前为止,大多数图像恢复方法都考虑了这两种策略之一,但并未同时考虑这两种策略。本文提出了一种新颖的图像恢复方法,该方法将非局部自相似性和全局结构稀疏性结合在一个有效模型中。通过基于加权核范数的自适应正则化技术,可以同时重建一组相似的补丁。此外,使用创新策略可以保留全局结构,该策略将图像分解为平滑分量和稀疏残差,后者可以使用l n 1 nnorm。基于乘法器交替方向方法的一种优化技术被用于有效地恢复损坏的图像。在两个重要的图像恢复任务上评估了该方法的性能:图像完成和超分辨率。实验结果表明,对于各种类型和级别的图像损坏,我们的方法在这些任务方面均优于最新方法。

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