基于压缩感知的图像绘制算法的最新研究成果和开放问题

Guoyue Chen, Guan Gui, Sen Li
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引用次数: 1

摘要

在过去的几十年里,许多图像修复(IMIN)算法被开发出来以恢复损坏的图像。然而,传统的IMIN算法无法学习到损坏图像的稀疏结构。因此,精确地修复图像是非常困难的。与传统算法相比,基于压缩感知的IMIN算法可以去除强噪声,并通过学习图像固有的稀疏结构来恢复图像。本文介绍了基于压缩感知的IMIN算法的最新研究成果,并给出了相应的仿真实例来验证所提出的算法。此外,我们还总结了一些尚未解决的问题,并指出了解决这些问题的可能途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recent results in compressive sensing based image inpainiting algorithms and open problems
Many image inpainiting (IMIN) algorithms have been developed to restore corrupted images in last decades. However, traditional IMIN algorithms do not learn the sparse structure of the corrupted images. Hence, it is very hard to renovate the images accurately. In contrast to the conventional algorithms, compressive sensing based IMIN algorithms can remove strong noise as well as can restore images by virtual of learning the inherent sparse structure in images. This paper introduces recent results in compressive sensing based IMIN algorithms and presents corresponding simulation examples to validate the proposed algorithms. In addition, we also summarize some open problems and point out some potential approaches to solve these problems.
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