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Analysis sparsity based single image superresolution

机译:基于稀疏分析的单图像超分辨率

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The superresolution problem can be formulated as reconstructing a high resolution image from a down-scaled and possibly blurred version. This problem is a highly ill-posed inverse problem. To regularize this ill-posed inverse problem different methods have been used in previous works, where the use of sparse representation has been quite popular recently. Sparse representation for image processing works on the premise that images can be represented as a sparse linear combination of elements from a redundant dictionary. In a pioneering work, dictionary couples which are learned from a set of images have been used to solve the superresolution problem using synthesis sparsity. In this paper we present a new approach to single image superresolution problem by using the analysis sparse representation model. Simulation results indicate that using analysis sparsity model with a learned analysis sparsity operator can be an effective and efficient alternative to the synthesis sparsity for the image superresolution problem.
机译:可以将超分辨率问题公式化为从缩小且可能模糊的版本中重建高分辨率图像。这个问题是病态严重的逆问题。为了规范这个不适定的逆问题,在以前的工作中使用了不同的方法,其中稀疏表示法的使用最近很流行。用于图像处理的稀疏表示的前提是,图像可以表示为冗余字典中元素的稀疏线性组合。在一项开创性的工作中,从一组图像中学习的字典对已被用于使用合成稀疏度来解决超分辨率问题。在本文中,我们通过使用分析稀疏表示模型提出了一种解决单图像超分辨率问题的新方法。仿真结果表明,将分析稀疏性模型与学习的分析稀疏性算子一起使用可以有效替代图像超分辨率问题中的合成稀疏性。

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