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Inpainting of Dunhuang Murals by Sparsely Modeling the Texture Similarity and Structure Continuity

机译:通过稀疏建模纹理相似性和结构连续性来迫害敦煌壁画

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摘要

Ancient mural paintings often suffer from damage such as color degradation, pigment peeling, and even large-area shedding. Image inpainting techniques are widely used to virtually repair these damages. Generally, the inpainting task can be very challenging when structures are totally missing within a large area. In this article, we study mural image inpainting by incorporating structure information collected from line drawings, and propose a line-drawings-guided inpainting algorithm for repairing the damaged murals of Mogao Grottoes, Dunhuang. Unlike traditional methods that use one single patch to inpaint the target area, the proposed method constructs the target patch with a linear combination of multiple candidate patches. These candidate patches are selected by a sparse model, where two special constraints have been introduced to guarantee the texture similarity and structure continuity. Experimental results demonstrate the effectiveness of the proposed method.
机译:古壁画绘画经常遭受颜色降解,颜料剥离,甚至大面积脱落等损坏。 图像染色技术广泛用于几乎修复这些损害。 通常,当结构在大面积内完全缺少时,染色任务可能非常具有挑战性。 在本文中,我们通过纳入从线图中收集的结构信息来研究壁画图像,并提出一种用于修复敦煌的损坏摩尔的损坏壁画的线图引导的初探算法。 与使用单个补丁使用一个补丁进行定制的传统方法不同,所提出的方法构造具有多个候选贴片的线性组合的目标补丁。 这些候选补丁由稀疏模型选择,其中已经引入了两个特殊的限制以保证纹理相似性和结构连续性。 实验结果表明了该方法的有效性。

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