Low-rank representation for single image superresolution using metric learning

Shaohui Li, Linkai Luo, Hong Peng
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Abstract

Neighbors embedding is a promising method for single image super-resolution (SR). However, the fixed number of neighbors for different kind of input low resolution (LR) patches may be improper. In addition, the assumption that low resolution space and high resolution (HR) space has similar local geometry leads to improper HR patches are used for reconstruction. In this paper, we propose a novel single image super-resolution method based on low-rank representation and metric learning. Low-rank representation aims to exclude outliers in neighbors, and metric learning aims to learn a linear projection matrix so that LR space with the transformed metric and HR space have similar local structure. Experiments on fourteen images show that our method obtains the best results on most images compared with traditional methods, which illustrates the effectiveness and superiority of the proposed methods.
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基于度量学习的单幅图像超分辨率低秩表示
邻域嵌入是一种很有前途的单幅图像超分辨率方法。但是,对于不同类型的输入低分辨率(LR) patch,采用固定的邻居数可能是不合适的。此外,假设低分辨率空间和高分辨率空间具有相似的局部几何形状,导致使用不合适的HR补丁进行重建。本文提出了一种基于低秩表示和度量学习的单幅图像超分辨方法。低秩表示的目的是排除邻居中的异常值,度量学习的目的是学习一个线性投影矩阵,使经过变换的度量的LR空间和HR空间具有相似的局部结构。在14幅图像上的实验表明,与传统方法相比,我们的方法在大多数图像上获得了最好的结果,说明了所提方法的有效性和优越性。
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