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Sparse Representation with Global and Nonlocal Self-similarity Prior for Single Image Super-Resolution

机译:单图像超高分辨率先验与全局和非局部自相似性的稀疏表示

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Nonlocal self-similarity sparse representation models exhibit good performance in single image super-resolution (SR) application. However, due to the independent coding process of each image patch, the global similarity information among all similar image patches in whole image is lost. Consequently, the similar image patches may be encoded as the totally different code coefficients. In this paper, considering that low-rank constraint is better at capturing the global similarity information, a new sparse representation model combining the global low-rank prior and the nonlocal self-similarity prior simultaneously is proposed for single image super-resolution. The weighted nuclear norm minimization (WNNM) method is then introduced to effectively solve the proposed model. Extensive experimental results validate that the presented model achieves convincing improvement over many state-of-the-art SR models both quantitatively and perceptually.
机译:非局部自相似性稀疏表示模型在单图像超分辨率(SR)应用程序中表现出良好的性能。然而,由于每个图像块的独立编码过程,整个图像中所有相似图像块之间的全局相似性信息会丢失。因此,相似的图像块可以被编码为完全不同的代码系数。本文考虑到低秩约束更适合捕获全局相似度信息,针对单图像超分辨率,提出了一种同时结合全局低秩先验和非局部自相似先验的稀疏表示模型。然后引入加权核规范最小化(WNNM)方法来有效地解决所提出的模型。大量的实验结果证明,相对于许多最新的SR模型,该模型在数量和感知上均取得了令人信服的改进。

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