RetinexDualV2: Physically-Grounded Dual Retinex for Generalized UHD Image Restoration
About
We propose RetinexDualV2, a unified, physically grounded dual-branch framework for diverse Ultra-High-Definition (UHD) image restoration. Unlike generic models, our method employs a Task-Specific Physical Grounding Module (TS-PGM) to extract degradation-aware priors (e.g., rain masks and dark channels). These explicitly guide a Retinex decomposition network via a novel Physical-Conditioned Multi-head Self-Attention (PC-MSA) mechanism, enabling robust reflection and illumination correction. This physical conditioning allows a single architecture to handle various complex degradations seamlessly, without task-specific structural modifications. RetinexDualV2 demonstrates exceptional generalizability, securing 4th place in the NTIRE 2026 Day and Night Raindrop Removal Challenge and 5th place in the Joint Noise Low-light Enhancement (JNLLIE) Challenge. Extensive experiments confirm the state-of-the-art performance and efficiency of our physically motivated approach. Code is available at https://github.com/ErrorLogic1211/RetinexDual/tree/master/RetinexDualV2
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Raindrop Removal | NTIRE Day and Night Raindrop Removal 2026 (test) | Final Score33.8556 | 15 | |
| Joint Noise Low-light enhancement | NTIRE Joint Noise Low-light enhancement Challenge 2026 | PSNR18.69 | 14 | |
| Low-light Image Enhancement | UHD-LL | PSNR28.91 | 12 |