Blind face restoration aims to recover high-quality facial images from various unidentified sources of degradation, posing significant challenges due to the minimal information retrievable from the degraded images. Prior knowledge-based methods, leveraging geometric priors and facial features, have led to advancements in face restoration but often fall short of capturing fine details. To address this, we introduce a visual style prompt learning framework that utilizes diffusion probabilistic models to explicitly generate visual prompts within the latent space of pre-trained generative models. These prompts are designed to guide the restoration process. To fully utilize the visual prompts and enhance the extraction of informative and rich patterns, we introduce a style-modulated aggregation transformation layer. Extensive experiments and applications demonstrate the superiority of our method in achieving high-quality blind face restoration. The source code is available at \href{https://github.com/LonglongaaaGo/VSPBFR}{https://github.com/LonglongaaaGo/VSPBFR}.
@article{arxiv.2412.21042,
title = {Visual Style Prompt Learning Using Diffusion Models for Blind Face Restoration},
author = {Wanglong Lu and Jikai Wang and Tao Wang and Kaihao Zhang and Xianta Jiang and Hanli Zhao},
journal= {arXiv preprint arXiv:2412.21042},
year = {2024}
}
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Published at Pattern Recognition; 13 pages, 11 figures