Neighborhood regression for edge-preserving image super-resolution

Yanghao Li, Jiaying Liu, Wenhan Yang, Zongming Guo
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引用次数: 14

Abstract

There have been many proposed works on image super-resolution via employing different priors or external databases to enhance HR results. However, most of them do not work well on the reconstruction of high-frequency details of images, which are more sensitive for human vision system. Rather than reconstructing the whole components in the image directly, we propose a novel edge-preserving super-resolution algorithm, which reconstructs low- and high-frequency components separately. In this paper, a Neighborhood Regression method is proposed to reconstruct high-frequency details on edge maps, and low-frequency part is reconstructed by the traditional bicubic method. Then, we perform an iterative combination method to obtain the estimated high resolution result, based on an energy minimization function which contains both low-frequency consistency and high-frequency adaptation. Extensive experiments evaluate the effectiveness and performance of our algorithm. It shows that our method is competitive or even better than the state-of-art methods.
边缘保持图像超分辨率的邻域回归
目前已有许多关于图像超分辨率的研究,通过使用不同的先验或外部数据库来增强HR结果。然而,大多数方法都不能很好地重建对人类视觉系统更为敏感的图像高频细节。本文提出了一种新的保持边缘的超分辨率算法,该算法不直接重建图像中的整个分量,而是分别重建低频和高频分量。本文提出了一种邻域回归方法来重建边缘图的高频细节,低频部分采用传统的双三次方法重建。然后,基于同时包含低频一致性和高频自适应的能量最小化函数,采用迭代组合方法获得估计的高分辨率结果。大量的实验评估了我们的算法的有效性和性能。这表明我们的方法是有竞争力的,甚至比最先进的方法更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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