Image enhancement based on matrix completion

Hui Guo, W. Fang, Xin Wen, F. Nian
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引用次数: 1

Abstract

In recent years, how to effectively complement preferable details to an image according to its local information is one of the research focuses in the field of image enhancement. For an image badly lack of local details, the key of image enhancement is to reconstruct the unknown original details in terms of the small amount of known information. To completely or approximately reconstruct an unknown signal by a small number of its known elements is a matrix completion problem in the sparse theory. This paper proposes an image enhancement algorithm based on matrix completion, which implements effective complements of local details to the local blurred image by solving the nuclear norm minimization problem with the method of singular value shrinkage iteration, and achieves image enhancement with fine subjective qualities for human vision.
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基于矩阵补全的图像增强
近年来,如何根据图像的局部信息对图像进行有效补充,是图像增强领域的研究热点之一。对于局部细节严重缺乏的图像,图像增强的关键是利用少量的已知信息重构未知的原始细节。用少量已知元素完全或近似重构一个未知信号是稀疏理论中的矩阵补全问题。本文提出了一种基于矩阵补全的图像增强算法,利用奇异值收缩迭代的方法解决核范数最小化问题,实现局部细节对局部模糊图像的有效补充,实现人类视觉主观品质优良的图像增强。
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