An adaptive single image method for super resolution

A. Mokari, A. Ahmadyfard
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引用次数: 1

Abstract

In this paper we propose an adaptive method for single image super resolution by exploiting the self-similarity. By using similarity between patches of input image and a down sampled version of the input image, we create super-resolution image. In the proposed method, first we segment input image. For each segment if variance of intensity is significant, we increase overlap between patches and reduce the patch size. On the contrary, for image segments with low detail we decrease the overlap between patches and increase the patch size. The experimental result showed, the proposed method is significantly faster than the existing methods whereas the performance in terms of PSNR criterions is comparable with the existing methods.
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一种超分辨率自适应单幅图像方法
本文提出了一种利用自相似度实现单幅图像超分辨率的自适应方法。通过利用输入图像的块与下采样版本之间的相似性,我们创建了超分辨率图像。在该方法中,首先对输入图像进行分割。对于每个片段,如果强度方差显著,则增加斑块之间的重叠并减小斑块大小。相反,对于低细节的图像片段,我们减少了补丁之间的重叠,增加了补丁的大小。实验结果表明,该方法的速度明显快于现有方法,而在PSNR准则方面的性能与现有方法相当。
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