Imagest: a style conditioned art painting synthesis and generation networks

JH Hu and PB Zhou and J Gao and YH Zhang and GH Geng and MQ Zhou, NPJ HERITAGE SCIENCE, 13, 613 (2025).

DOI: 10.1038/s40494-025-02167-y

To address the restoration of artworks and enhance the conservation of uniquely styled paintings using computational techniques such as large- parameter models, we introduce a diffusion-based network, namely Imagest, a novel multi-conditional artwork synthesis method. Specifically designed to overcome the limitations of existing restoration techniques for heavily damaged artworks, Imagest addresses the challenges of insufficient conditioning and inconsistent synthesis results. By jointly leveraging stylistic image and text prompts, our method facilitates more accurate and stylistically coherent reconstructions. Experiments conducted on the WikiArt and Chinese traditional painting datasets demonstrate Imagest's efficiency in generating artworks that align with given style and content prompts. Compared to state-of-the-art baselines such as DALL.E 2 and Stable Diffusion, Imagest achieves competitive performance in both image inpainting and text-guided synthesis, as evidenced by favorable FID and CLIP-score metrics.

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