利用邻域嵌入反投影残差的超分辨率

M. Bevilacqua, A. Roumy, C. Guillemot, Marie-Line Alberi-Morel
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引用次数: 17

摘要

本文提出了一种基于外部字典的邻居嵌入超分辨率(SR)算法。在基于邻域嵌入的SR中,字典由高分辨率和低分辨率(LR)训练图像对训练而成,并由对补丁组成:匹配补丁(m-patch)用于匹配输入图像补丁,只包含低频内容;重建补丁(r-patch)用于生成输出图像补丁,实际带来高频细节。我们提出了一种新的训练方案,其中m-patch是从增强的LR图像的反投影插值中提取的,r-patch是从反投影残差中提取的。然后进一步优化字典,最后在SR算法阶段考虑非负邻居嵌入。我们奇异地考虑了算法的各个元素,并证明了每个元素对最终结果都有增益。然后将完整的算法与其他最先进的方法进行比较,并显示其竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Super-resolution using neighbor embedding of back-projection residuals
In this paper we present a novel algorithm for neighbor embedding based super-resolution (SR), using an external dictionary. In neighbor embedding based SR, the dictionary is trained from couples of high-resolution and low-resolution (LR) training images, and consists of pairs of patches: matching patches (m-patches), which are used to match the input image patches and contain only low-frequency content, and reconstruction patches (r-patches), which are used to generate the output image patches and actually bring the high-frequency details. We propose a novel training scheme, where the m-patches are extracted from enhanced back-projected interpolations of the LR images and the r-patches are extracted from the back-projection residuals. A procedure to further optimize the dictionary is followed, and finally nonnegative neighbor embedding is considered at the SR algorithm stage. We consider singularly the various elements of the algorithm, and prove that each of them brings a gain on the final result. The complete algorithm is then compared to other state-of-the-art methods, and its competitiveness is shown.
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