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Example-based learning for single-image super-resolution and JPEG artifact removal

机译:基于示例的学习,可实现单图像超分辨率和JPEG伪像去除

摘要

This paper proposes a framework for single-image super-resolution and JPEG artifact removal. The underlying idea is to learn a map from input low-quality images (suitably preprocessed low-resolution or JPEG encoded images) to target high-quality images based on example pairs of input and output images. To retain the complexity of the resulting learning problem at a moderate level, a patch-based approach is taken such that kernel ridge regression (KRR) scans the input image with a small window (patch) and produces a patchvalued output for each output pixel location. These constitute a set of candidate images each of which reflects different local information. An image output is then obtained as a convex combination of candidates for each pixel based on estimated confidences of candidates. To reduce the time complexity of training and testing for KRR, a sparse solution is found by combining the ideas of kernel matching pursuit and gradient descent. As a regularized solution, KRR leads to a better generalization than simply storing the examples as it has been done in existing example-based super-resolution algorithms and results in much less noisy images. However, this may introduce blurring and ringing artifacts around major edges as sharp changes are penalized severely. A prior model of a generic image class which takes into account the discontinuity property of images is adopted to resolve this problem. Comparison with existing super-resolution and JPEG artifact removal methods shows the effectiveness of the proposed method. Furthermore, the proposed method is generic in that it has the potential to be applied to many other image enhancement applications.
机译:本文提出了一种用于单图像超分辨率和JPEG伪像去除的框架。基本思想是根据输入和输出图像的示例对,从输入的低质量图像(适当地经过预处理的低分辨率或JPEG编码的图像)学习映射到高质量图像的地图。为了在中等水平上保持所导致的学习问题的复杂性,采用了基于补丁的方法,使得内核岭回归(KRR)用一个小窗口(补丁)扫描输入图像,并为每个输出像素位置生成补丁值输出。这些构成一组候选图像,每个候选图像反映不同的本地信息。然后基于估计的候选置信度,将图像输出获得为每个像素的候选凸组合。为了减少KRR训练和测试的时间复杂性,通过结合核匹配追踪和梯度下降的思想找到了一种稀疏的解决方案。作为一种正规化的解决方案,与简单地存储示例(如在现有的基于示例的超分辨率算法中所做的那样)相比,KRR带来了更好的概括性,并且产生的噪点更少。但是,这可能会在急剧变化的严厉惩罚下在主要边缘周围引入模糊和环状的伪影。采用考虑图像的不连续性的通用图像类别的现有模型来解决该问题。与现有的超分辨率和JPEG伪影去除方法的比较显示了该方法的有效性。此外,所提出的方法是通用的,因为它具有被应用于许多其他图像增强应用的潜力。

著录项

  • 作者

    Kim Kwang In; Kwon Younghee;

  • 作者单位
  • 年度 2008
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  • 原文格式 PDF
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