SLER-IR: Spherical Layer-wise Expert Routing for All-in-One Image Restoration
About
Image restoration under diverse degradations remains challenging for unified all-in-one frameworks due to feature interference and insufficient expert specialization. We propose SLER-IR, a spherical layer-wise expert routing framework that dynamically activates specialized experts across network layers. To ensure reliable routing, we introduce a Spherical Uniform Degradation Embedding with contrastive learning, which maps degradation representations onto a hypersphere to eliminate geometry bias in linear embedding spaces. In addition, a Global-Local Granularity Fusion (GLGF) module integrates global semantics and local degradation cues to address spatially non-uniform degradations and the train-test granularity gap. Experiments on three-task and five-task benchmarks demonstrate that SLER-IR achieves consistent improvements over state-of-the-art methods in both PSNR and SSIM. Code and models will be publicly released.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Deblurring | GoPro | PSNR31.27 | 354 | |
| Deraining | Rain100L | PSNR38.47 | 196 | |
| Low-light Image Enhancement | LOL | PSNR23.96 | 162 | |
| Dehazing | SOTS | PSNR33.43 | 154 | |
| All-in-one Image Restoration | CBSD68, SOTS, and Rain100L | PSNR33.14 | 22 | |
| Denoising | CBSD68 | PSNR (sigma=15)34.25 | 9 |