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Image Denoising Using Low-Rank Dictionary and Sparse Representation

机译:低秩字典和稀疏表示的图像降噪

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In this paper, we propose an image denoising model by using low-rank dictionary and sparse representation (LRSR). The K-SVD algorithm learns a universal dictionary for all patches in an image and the NLM exploits similarities of nonlocal patches, both achieve effective denoising performance. Motivated by these methods, we propose to use a low-rank dictionary for each cluster of similar patches and the dictionary is used to simultaneously produce sparse representations of all patches in the cluster. Our algorithm has two advantages. The first one is, we use a dictionary particular to each cluster of similar patches so that the dictionary can exploit the peculiar structure underlying the cluster and better adapts to the cluster. The second, we represent the similar patches in a cluster simultaneously by the dictionary so that we can impose a structured sparsity to make full use of similarities of these patches and get better restoration quality. Experimental results show that our method performs better than or on par with the state-of-the-art denoising methods such as BM3D and TDNL.
机译:在本文中,我们提出了一种使用低秩字典和稀疏表示(LRSR)的图像去噪模型。 K-SVD算法为图像中的所有色块学习通用字典,而NLM利用非局部色块的相似性,均实现了有效的降噪性能。基于这些方法,我们建议对相似补​​丁的每个群集使用低秩字典,并且该词典用于同时生成群集中所有补丁的稀疏表示。我们的算法有两个优点。第一个是,我们使用特定于相似补丁程序的每个簇的字典,以便该字典可以利用簇下面的特殊结构并更好地适应该簇。第二,我们通过字典同时在群集中表示相似的补丁,以便我们可以施加结构化的稀疏性,以充分利用这些补丁的相似性并获得更好的恢复质量。实验结果表明,我们的方法比BM3D和TDNL等最先进的去噪方法表现更好或与之相当。

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