Deep Parametric 3D Filters for Joint Video Denoising and Illumination Enhancement in Video Super Resolution
About
Despite the quality improvement brought by the recent methods, video super-resolution (SR) is still very challenging, especially for videos that are low-light and noisy. The current best solution is to subsequently employ best models of video SR, denoising, and illumination enhancement, but doing so often lowers the image quality, due to the inconsistency between the models. This paper presents a new parametric representation called the Deep Parametric 3D Filters (DP3DF), which incorporates local spatiotemporal information to enable simultaneous denoising, illumination enhancement, and SR efficiently in a single encoder-and-decoder network. Also, a dynamic residual frame is jointly learned with the DP3DF via a shared backbone to further boost the SR quality. We performed extensive experiments, including a large-scale user study, to show our method's effectiveness. Our method consistently surpasses the best state-of-the-art methods on all the challenging real datasets with top PSNR and user ratings, yet having a very fast run time.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video Super-Resolution | SDSD-in | PSNR27.23 | 24 | |
| Video Super-Resolution | SDSD-out | PSNR22.25 | 24 | |
| Video Super-Resolution | SDE-in | PSNR16.99 | 24 | |
| Video Super-Resolution | SDE out | PSNR14.89 | 24 | |
| Low-light Video Enhancement | SDSD indoor | PSNR27.63 | 18 | |
| Low-light Video Enhancement | SDSD outdoor | PSNR23.85 | 18 | |
| Low-light Video Enhancement | SMID | PSNR27.19 | 18 | |
| Low-light Video Enhancement | DID | PSNR22.39 | 18 | |
| Low-light Video Enhancement | DAVIS | PSNR22.04 | 12 | |
| Low-light Video Enhancement | YouTube-VOS (test) | PSNR22.96 | 12 |