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Sparse representation based single image super-resolution with low-rank constraint and nonlocal self-similarity

机译:低秩约束和非局部自相似度的基于稀疏表示的单图像超分辨率

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摘要

Single image super-resolution reconstruction (SISR) plays an important role in many computer vision applications. It aims to estimate a high-resolution image from an input low-resolution image. In existing reconstruction methods, the nonlocal self-similarity based sparse representation methods exhibit good performance. However, for this kind of methods, due to the independent coding process of each image patch to be encoded, the global similarity information among all similar image patches in whole image is lost in reconstruction. As a result, similar image patches may be encoded as totally different code coefficients. Considering that the low-rank constraint is better at capturing the global similarity information, we propose a new sparse representation model, which concerns the low-rank constraint and the nonlocal self-similarity in the sparse representation model simultaneously, to preserve such global similarity information. The linearized alternating direction method with adaptive penalty is introduced to effectively solve the proposed model. Extensive experimental results demonstrate that the proposed model achieves convincing improvement over many state-of-the-art SISR models. Moreover, these good results also demonstrate the effectiveness of the proposed model in preserving the global similarity information.
机译:单图像超分辨率重建(SISR)在许多计算机视觉应用中起着重要作用。其目的是从输入的低分辨率图像估计高分辨率图像。在现有的重建方法中,基于非局部自相似的稀疏表示方法表现出良好的性能。然而,对于这种方法,由于要编码的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在重建时会丢失。结果,相似的图像块可以被编码为完全不同的代码系数。考虑到低秩约束更适合捕获全局相似性信息,我们提出了一个新的稀疏表示模型,该模型同时关注稀疏表示模型中的低秩约束和非局部自相似性,以保留此类全局相似性信息。引入具有自适应惩罚的线性化交替方向方法以有效地解决该模型。大量的实验结果表明,与许多最新的SISR模型相比,该模型具有令人信服的改进。此外,这些良好的结果还证明了所提出的模型在保存全局相似性信息方面的有效性。

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