快速超分辨率的局部正则化锚定邻域回归

Junjun Jiang, Jican Fu, T. Lu, R. Hu, Zhongyuan Wang
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引用次数: 5

摘要

基于学习的图像超分辨率(SR)的目标是从给定的低分辨率(LR)输入生成可信且视觉上令人愉悦的高分辨率(HR)图像。这个问题非常缺乏约束,它依赖于示例或一些强图像先验来更好地重建缺失的HR图像细节。本文解决了基于LR和HR示例字典的LR和HR图像之间映射函数(即投影矩阵)的学习问题。最近提出的一种方法,锚定邻域回归(ANR)[1],提供了最先进的质量性能,并且非常快。在本文中,我们提出了一种改进的ANR,即局部正则化锚定邻域回归(LANR),它利用位置约束回归代替了ANR中的脊回归。LANR根据每个相邻的字典原子与输入LR patch的相关性为其分配不同的自由度,从而使学习到的投影矩阵更加灵活。实验结果表明,该算法比目前最先进的方法更有效,例如,0.1-0.4 dB的PSNR优于ANR。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Locally regularized Anchored Neighborhood Regression for fast Super-Resolution
The goal of learning-based image Super-Resolution (SR) is to generate a plausible and visually pleasing High-Resolution (HR) image from a given Low-Resolution (LR) input. The problem is dramatically under-constrained, which relies on examples or some strong image priors to better reconstruct the missing HR image details. This paper addresses the problem of learning the mapping functions (i.e. projection matrices) between the LR and HR images based on a dictionary of LR and HR examples. One recently proposed method, Anchored Neighborhood Regression (ANR) [1], provides state-of-the-art quality performance and is very fast. In this paper, we propose an improved variant of ANR, namely Locally regularized Anchored Neighborhood Regression (LANR), which utilizes the locality-constrained regression in place of the ridge regression in ANR. LANR assigns different freedom for each neighbor dictionary atom according to its correlation to the input LR patch, thus the learned projection matrices are much more flexible. Experimental results demonstrate that the proposed algorithm performs efficiently and effectively over state-of-the-art methods, e.g., 0.1-0.4 dB in term of PSNR better than ANR.
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