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Across-Resolution Adaptive Dictionary Learning for Single-Image Super-Resolution

机译:用于单图像超分辨率的跨分辨率自适应字典学习

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This paper proposes a novel adaptive dictionary learning approach for a single-image super-resolution based on a sparse representation. The adaptive dictionary learning approach of the sparse representation is very powerful, for image restoration such as image denoising. The existing adaptive dictionary learning requires training image patches which have the same resolution as the output image. Because of this requirement, the adaptive dictionary learning for the single-image super-resolution is not trivial, since the resolution of the input low-resolution image which can be used for the adaptive dictionary learning is essentially different from that of the output high-resolution image. It is known that natural images have high across-resolution patch redundancy which means that we can find similar patches within different resolution images. Our experimental comparisons demonstrate that the proposed across-resolution adaptive dictionary learning approach outperforms state-of-the-art single-image super-resolutions.
机译:本文提出了一种基于稀疏表示的单图像超分辨率自适应字典学习方法。稀疏表示的自适应字典学习方法非常强大,可用于图像还原(例如图像去噪)。现有的自适应词典学习需要训练图像块,其具有与输出图像相同的分辨率。由于这一要求,用于单图像超分辨率的自适应字典学习并非无关紧要,因为可以用于自适应字典学习的输入低分辨率图像的分辨率与输出高分辨率图像的分辨率本质上有所不同。分辨率图像。众所周知,自然图像具有较高的跨分辨率补丁冗余,这意味着我们可以在不同分辨率的图像中找到相似的补丁。我们的实验比较表明,提出的跨分辨率自适应词典学习方法优于最新的单图像超分辨率。

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