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Image Deblurring and Super-Resolution by Adaptive Sparse Domain Selection and Adaptive Regularization

机译:自适应稀疏域选择和自适应正则化实现图像去模糊和超分辨率

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摘要

As a powerful statistical image modeling technique, sparse representation has been successfully used in various image restoration applications. The success of sparse representation owes to the development of the $l_{1}$-norm optimization techniques and the fact that natural images are intrinsically sparse in some domains. The image restoration quality largely depends on whether the employed sparse domain can represent well the underlying image. Considering that the contents can vary significantly across different images or different patches in a single image, we propose to learn various sets of bases from a precollected dataset of example image patches, and then, for a given patch to be processed, one set of bases are adaptively selected to characterize the local sparse domain. We further introduce two adaptive regularization terms into the sparse representation framework. First, a set of autoregressive (AR) models are learned from the dataset of example image patches. The best fitted AR models to a given patch are adaptively selected to regularize the image local structures. Second, the image nonlocal self-similarity is introduced as another regularization term. In addition, the sparsity regularization parameter is adaptively estimated for better image restoration performance. Extensive experiments on image deblurring and super-resolution validate that by using adaptive sparse domain selection and adaptive regularization, the proposed method achieves much better results than many state-of-the-art algorithms in terms of both PSNR and visual perception.
机译:作为一种强大的统计图像建模技术,稀疏表示已成功用于各种图像恢复应用程序中。稀疏表示法的成功归功于 $ l_ {1} $ -范数优化技术的发展以及自然在某些领域,图像本质上是稀疏的。图像恢复质量很大程度上取决于所采用的稀疏域能否很好地表示基础图像。考虑到内容在不同图像或单个图像中的不同补丁之间可能会有很大差异,我们建议从预先收集的示例图像补丁数据集中学习各种基础集,然后,对于要处理的给定补丁,需要一组基础自适应地选择来表征局部稀疏域。我们进一步将两个自适应正则化项引入稀疏表示框架。首先,从示例图像补丁的数据集中学习了一组自回归(AR)模型。自适应地选择最适合给定补丁的AR模型,以规范化图像局部结构。其次,将图像非局部自相似性作为另一个正则化术语引入。另外,稀疏正则化参数被自适应地估计以获得更好的图像恢复性能。大量的图像去模糊和超分辨率实验证明,通过使用自适应稀疏域选择和自适应正则化,该方法在PSNR和视觉感知方面均比许多最新算法取得了更好的效果。

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