JoReS-Diff: Joint Retinex and Semantic Priors in Diffusion Model for Low-light Image Enhancement (2312.12826v2)
Abstract: Low-light image enhancement (LLIE) has achieved promising performance by employing conditional diffusion models. Despite the success of some conditional methods, previous methods may neglect the importance of a sufficient formulation of task-specific condition strategy, resulting in suboptimal visual outcomes. In this study, we propose JoReS-Diff, a novel approach that incorporates Retinex- and semantic-based priors as the additional pre-processing condition to regulate the generating capabilities of the diffusion model. We first leverage pre-trained decomposition network to generate the Retinex prior, which is updated with better quality by an adjustment network and integrated into a refinement network to implement Retinex-based conditional generation at both feature- and image-levels. Moreover, the semantic prior is extracted from the input image with an off-the-shelf semantic segmentation model and incorporated through semantic attention layers. By treating Retinex- and semantic-based priors as the condition, JoReS-Diff presents a unique perspective for establishing an diffusion model for LLIE and similar image enhancement tasks. Extensive experiments validate the rationality and superiority of our approach.
- Yuhui Wu (7 papers)
- Guoqing Wang (95 papers)
- Zhiwen Wang (27 papers)
- Yang Yang (884 papers)
- Tianyu Li (101 papers)
- Chongyi Li (88 papers)
- Heng Tao Shen (117 papers)
- Malu Zhang (43 papers)