中国传统山水画超分辨率的扩散概率模型

IF 2.6 1区 艺术学 Q2 CHEMISTRY, ANALYTICAL
Qiongshuai Lyu, Na Zhao, Yu Yang, Yuehong Gong, Jingli Gao
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引用次数: 0

摘要

中国传统山水画在数字化保护过程中容易出现低分辨率图像问题。为了从低分辨率山水画中重建高质量图像,我们提出了一种新颖的中国山水画生成扩散概率模型(CLDiff),该模型类似于朗格文动态过程,通过多个迭代细化步骤实现高斯分布向经验数据分布的转化。所提出的 CLDiff 可以通过参数化马尔可夫链将纯高斯噪声逐步转化为低分辨率输入上的超分辨率风景画条件,从而提供水墨纹理清晰的超分辨率预测。此外,通过在 U-Net 架构中引入具有能量函数的注意力模块,我们将去噪扩散概率模型变成了一个功能强大的生成器。实验结果表明,CLDiff 在中国传统山水画超分辨率任务中取得了更好的视觉效果和极具竞争力的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A diffusion probabilistic model for traditional Chinese landscape painting super-resolution

A diffusion probabilistic model for traditional Chinese landscape painting super-resolution

Traditional Chinese landscape painting is prone to low-resolution image issues during the digital protection process. To reconstruct high-quality images from low-resolution landscape paintings, we propose a novel Chinese landscape painting generation diffusion probabilistic model (CLDiff), which is similar to the Langevin dynamic process, and realizes the transformation of the Gaussian distribution into the empirical data distribution through multiple iterative refinement steps. The proposed CLDiff can provide ink texture clear super-resolution predictions by gradually transforming the pure Gaussian noise into a super-resolution landscape painting condition on a low-resolution input through a parameterized Markov Chain. Moreover, by introducing an attention module with an energy function into the U-Net architecture, we turn the denoising diffusion probabilistic model into a powerful generator. Experimental results show that CLDiff achieves better visual results and highly competitive performance in traditional Chinese Landscape painting super-resolution tasks.

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来源期刊
Heritage Science
Heritage Science Arts and Humanities-Conservation
CiteScore
4.00
自引率
20.00%
发文量
183
审稿时长
19 weeks
期刊介绍: Heritage Science is an open access journal publishing original peer-reviewed research covering: Understanding of the manufacturing processes, provenances, and environmental contexts of material types, objects, and buildings, of cultural significance including their historical significance. Understanding and prediction of physico-chemical and biological degradation processes of cultural artefacts, including climate change, and predictive heritage studies. Development and application of analytical and imaging methods or equipments for non-invasive, non-destructive or portable analysis of artwork and objects of cultural significance to identify component materials, degradation products and deterioration markers. Development and application of invasive and destructive methods for understanding the provenance of objects of cultural significance. Development and critical assessment of treatment materials and methods for artwork and objects of cultural significance. Development and application of statistical methods and algorithms for data analysis to further understanding of culturally significant objects. Publication of reference and corpus datasets as supplementary information to the statistical and analytical studies above. Description of novel technologies that can assist in the understanding of cultural heritage.
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