单图像超分辨率局部半监督回归

Yilong Tang, Xiaoli Pan, Yuan Yuan, Pingkun Yan, Luoqing Li, Xuelong Li
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引用次数: 8

摘要

本文提出了一种基于局部半监督学习的单幅图像超分辨算法。与大多数基于示例的算法不同,在学习局部回归函数时考虑了测试补丁的信息,将低分辨率补丁映射到高分辨率补丁。基于最近邻的单图像超分辨算法一般采用定位策略。然而,最近邻估计的泛化性较差,降低了这类算法的性能。虽然局部回归算法可以解决这个问题,但局部训练集的大小总是太小,无法显著提高基于最近邻的算法的性能。为了克服这一困难,本文采用了半监督回归算法。与监督回归不同,半监督回归算法考虑了测试样本的信息,这使得半监督回归更加强大。注意到存在大量的测试补丁,基于最近邻的算法的性能可以通过采用半监督回归算法进一步提高。实验验证了该算法的有效性。
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Local semi-supervised regression for single-image super-resolution
In this paper, we propose a local semi-supervised learning-based algorithm for single-image super-resolution. Different from most of example-based algorithms, the information of test patches is considered during learning local regression functions which map a low-resolution patch to a high-resolution patch. Localization strategy is generally adopted in single-image super-resolution with nearest neighbor-based algorithms. However, the poor generalization of the nearest neighbor estimation decreases the performance of such algorithms. Though the problem can be fixed by local regression algorithms, the sizes of local training sets are always too small to improve the performance of nearest neighbor-based algorithms significantly. To overcome the difficulty, the semi-supervised regression algorithm is used here. Unlike supervised regression, the information about test samples is considered in semi-supervised regression algorithms, which makes the semi-supervised regression more powerful. Noticing that numerous test patches exist, the performance of nearest neighbor-based algorithms can be further improved by employing a semi-supervised regression algorithm. Experiments verify the effectiveness of the proposed algorithm.
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