Zhang Yongqin, Wang Xiaoyu, Zhu Panpan, Lu Xuan, Xiao Jinsheng, Zhou Wei, Li Zhan, Peng Xianlin
School of Archaeology and Cultural Heritage, Zhengzhou University, Zhengzhou, 450001, China.
School of Information Science and Technology, Northwest University, Xi'an, 710127, China.
Sci Rep. 2024 Oct 9;14(1):23519. doi: 10.1038/s41598-024-72368-1.
Ancient murals embody profound historical, cultural, scientific, and artistic values, yet many are afflicted with challenges such as pigment shedding or missing parts. While deep learning-based completion techniques have yielded remarkable results in restoring natural images, their application to damaged murals has been unsatisfactory due to data shifts and limited modeling efficacy. This paper proposes a novel progressive reasoning network designed specifically for mural image completion, inspired by the mural painting process. The proposed network comprises three key modules: a luminance reasoning module, a sketch reasoning module, and a color fusion module. The first two modules are based on the double-codec framework, designed to infer missing areas' luminance and sketch information. The final module then utilizes a paired-associate learning approach to reconstruct the color image. This network utilizes two parallel, complementary pathways to estimate the luminance and sketch maps of a damaged mural. Subsequently, these two maps are combined to synthesize a complete color image. Experimental results indicate that the proposed network excels in restoring clearer structures and more vivid colors, surpassing current state-of-the-art methods in both quantitative and qualitative assessments for repairing damaged images. Our code and results will be publicly accessible at https://github.com/albestobe/PRN .
古代壁画蕴含着深厚的历史、文化、科学和艺术价值,但许多壁画面临着诸如颜料脱落或部分缺失等问题。虽然基于深度学习的图像修复技术在恢复自然图像方面取得了显著成果,但由于数据偏移和有限的建模效果,它们在受损壁画修复中的应用并不理想。本文受壁画绘制过程启发,提出了一种专门用于壁画图像修复的新型渐进推理网络。该网络由三个关键模块组成:亮度推理模块、草图推理模块和颜色融合模块。前两个模块基于双编解码器框架,旨在推断缺失区域的亮度和草图信息。最后一个模块则采用配对关联学习方法来重建彩色图像。该网络利用两条并行且互补的路径来估计受损壁画的亮度和草图映射。随后,将这两个映射结合起来合成完整的彩色图像。实验结果表明,所提出的网络在恢复更清晰的结构和更鲜艳的颜色方面表现出色,在修复受损图像的定量和定性评估中均优于当前的先进方法。我们的代码和结果将在https://github.com/albestobe/PRN上公开提供。