IF 2.3 Q1 MATHEMATICS
Daniel Gaa, Vassillen Chizhov, Pascal Peter, Joachim Weickert, Robin Dirk Adam
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引用次数: 0

摘要

虽然用于图像去噪和内绘的局部方法可能使用了类似的概念,但迄今为止几乎没有人研究过它们之间的联系。这项工作的目标是通过关注双方最基础的场景--同质扩散设置--来建立两者之间的联系。为此,我们研究了去噪涂色(DbI)框架。它将来自不同噪声子集的多个涂色结果平均化。通过密度与扩散时间之间的明确关系,我们得出了移位规则网格上的 DbI 与一维同质扩散滤波之间的等效结果。我们还提供了二维情况下的经验扩展。我们提出的实验证实了我们的理论,并表明它也可以推广到非均质数据或非均质扩散。更广泛地说,我们的研究表明,数据自适应性这一几乎未被探索的想法值得更多关注--它可以像一些流行的算子自适应性模型一样强大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Connecting image inpainting with denoising in the homogeneous diffusion setting.

While local methods for image denoising and inpainting may use similar concepts, their connections have hardly been investigated so far. The goal of this work is to establish links between the two by focusing on the most foundational scenario on both sides - the homogeneous diffusion setting. To this end, we study a denoising by inpainting (DbI) framework. It averages multiple inpainting results from different noisy subsets. We derive equivalence results between DbI on shifted regular grids and homogeneous diffusion filtering in 1D via an explicit relation between the density and the diffusion time. We also provide an empirical extension to the 2D case. We present experiments that confirm our theory and suggest that it can also be generalized to diffusions with nonhomogeneous data or nonhomogeneous diffusivities. More generally, our work demonstrates that the hardly explored idea of data adaptivity deserves more attention - it can be as powerful as some popular models with operator adaptivity.

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CiteScore
2.30
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