CVNov 3, 2025

PRevivor: Reviving Ancient Chinese Paintings using Prior-Guided Color Transformers

arXiv:2511.01274v1h-index: 13
Originality Incremental advance
AI Analysis

This addresses the challenge of preserving cultural heritage by digitally restoring color-degraded ancient Chinese paintings, though it is incremental as it builds on existing colorization techniques.

The paper tackled the problem of color degradation in ancient Chinese paintings by proposing PRevivor, a prior-guided color transformer that learns from recent paintings to restore ancient ones, achieving superior performance in experiments against state-of-the-art methods.

Ancient Chinese paintings are a valuable cultural heritage that is damaged by irreversible color degradation. Reviving color-degraded paintings is extraordinarily difficult due to the complex chemistry mechanism. Progress is further slowed by the lack of comprehensive, high-quality datasets, which hampers the creation of end-to-end digital restoration tools. To revive colors, we propose PRevivor, a prior-guided color transformer that learns from recent paintings (e.g., Ming and Qing Dynasty) to restore ancient ones (e.g., Tang and Song Dynasty). To develop PRevivor, we decompose color restoration into two sequential sub-tasks: luminance enhancement and hue correction. For luminance enhancement, we employ two variational U-Nets and a multi-scale mapping module to translate faded luminance into restored counterparts. For hue correction, we design a dual-branch color query module guided by localized hue priors extracted from faded paintings. Specifically, one branch focuses attention on regions guided by masked priors, enforcing localized hue correction, whereas the other branch remains unconstrained to maintain a global reasoning capability. To evaluate PRevivor, we conduct extensive experiments against state-of-the-art colorization methods. The results demonstrate superior performance both quantitatively and qualitatively.

Foundations

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