Restoring Vision in Adverse Weather Conditions with Patch-Based Denoising Diffusion Models
About
Image restoration under adverse weather conditions has been of significant interest for various computer vision applications. Recent successful methods rely on the current progress in deep neural network architectural designs (e.g., with vision transformers). Motivated by the recent progress achieved with state-of-the-art conditional generative models, we present a novel patch-based image restoration algorithm based on denoising diffusion probabilistic models. Our patch-based diffusion modeling approach enables size-agnostic image restoration by using a guided denoising process with smoothed noise estimates across overlapping patches during inference. We empirically evaluate our model on benchmark datasets for image desnowing, combined deraining and dehazing, and raindrop removal. We demonstrate our approach to achieve state-of-the-art performances on both weather-specific and multi-weather image restoration, and experimentally show strong generalization to real-world test images.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Low-light Image Enhancement | LOL real v2 (test) | PSNR20.009 | 104 | |
| Low-light Image Enhancement | LOL Real_captured v2 | PSNR20.009 | 47 | |
| Low-light Image Enhancement | LOL v1 | PSNR17.913 | 40 | |
| Low-light Image Enhancement | LSRW | PSNR16.507 | 36 | |
| Rain drop removal | RainDrop (test) | PSNR32.43 | 33 | |
| Low-light Image Enhancement | DICM | NIQE Score3.773 | 33 | |
| Low-light Image Enhancement | LIME | NIQE4.312 | 33 | |
| Snow Removal | Snow100K (test) | PSNR28.86 | 28 | |
| Rain Removal | Rain100H (test) | PSNR26.66 | 28 | |
| Perceptual Image Restoration | Average across datasets (combined) | PSNR29.94 | 27 |