L2-Boosting-based dictionary learning for super-resolution

Yi Tang, Yi Ding, Ting-ting Zhou
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Abstract

Based on the assumption of sparse representation and the theory of compressed sensing, Yang et al. propose an excellent super-resolution algorithm. However, the process of training coupled dictionaries cannot be perfectly connected with the process of reconstructing super-resolution images in theory. Therefore, a novel dictionary-based super-resolution algorithm is proposed in this paper. Different from Yang's algorithm, the low- and high-resolution dictionaries are separately trained by employing an L2-Boosting algorithm. Extensive experiments validate that our algorithm can surpass Yang's algorithm in both visual perception and statistical performance.
基于l2 - boosting的超分辨率字典学习
Yang等人基于稀疏表示的假设和压缩感知理论,提出了一种优秀的超分辨率算法。然而,从理论上讲,耦合字典的训练过程并不能与超分辨率图像的重建过程完美地联系起来。为此,本文提出了一种基于字典的超分辨算法。与Yang的算法不同的是,低分辨率和高分辨率字典分别使用L2-Boosting算法进行训练。大量的实验证明,我们的算法在视觉感知和统计性能上都优于Yang的算法。
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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