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Fast single image SR via dictionary learning

机译:通过字典学习实现快速单图像SR

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In this study, the authors propose a fast method for single image super-resolution (SR). The relation between high-resolution (HR)/low-resolution (LR) patches is learned using the input image and a down-sampled version. They divide the input image into a number of equal blocks. For each image block, a pair of HR/LR dictionaries, using informative patches, are constructed. For each patch in the input image, an HR dictionary is constructed by concatenating the HR dictionary which it belongs and the HR dictionaries of eight neighbouring blocks. In the same manner, an LR dictionary for each patch is constructed. They represent each patch from the input image using a linear combination of atoms in its LR dictionary. Then, using the same combination for atoms in the HR dictionary of patch, the SR version for the patch is constructed. The computational complexity of the proposed method is considerably low because, in contrast to most of the existing methods, no learning phase, for building the dictionaries of a patch, is required. The experimental results of the proposed method is significantly faster than existing methods, whereas the performance in terms of peak signal-to-noise ratio and structural similarity criterions is comparable with the existing methods.
机译:在这项研究中,作者提出了一种用于单图像超分辨率(SR)的快速方法。使用输入图像和下采样版本可以了解高分辨率(HR)/低分辨率(LR)色标之间的关系。他们将输入图像分为多个相等的块。对于每个图像块,使用信息补丁构建一对HR / LR词典。对于输入图像中的每个小块,通过将其所属的HR字典与八个相邻块的HR字典级联来构造HR字典。以相同的方式,为每个补丁构建LR字典。它们使用其LR词典中原子的线性组合表示输入图像中的每个面片。然后,对补丁的HR词典中的原子使用相同的组合,即可构建补丁的SR版本。所提出的方法的计算复杂度非常低,因为与大多数现有方法相比,不需要学习阶段来构建补丁字典。提出的方法的实验结果明显快于现有方法,而在峰值信噪比和结构相似性标准方面的性能与现有方法相当。

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