ViDeNN: Deep Blind Video Denoising
About
We propose ViDeNN: a CNN for Video Denoising without prior knowledge on the noise distribution (blind denoising). The CNN architecture uses a combination of spatial and temporal filtering, learning to spatially denoise the frames first and at the same time how to combine their temporal information, handling objects motion, brightness changes, low-light conditions and temporal inconsistencies. We demonstrate the importance of the data used for CNNs training, creating for this purpose a specific dataset for low-light conditions. We test ViDeNN on common benchmarks and on self-collected data, achieving good results comparable with the state-of-the-art.
Michele Claus, Jan van Gemert• 2019
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video Denoising | DAVIS (test) | PSNR37.13 | 37 | |
| Video Denoising | Bosch Autodome IP 5000 IR Windmill sequence | PSNR36.69 | 15 | |
| Image Denoising | DND sRGB | PSNR (dB)37.0343 | 14 | |
| Video Denoising | IOCV 10 (full) | PSNR36.13 | 13 | |
| Video Denoising | CRVD 87 (full) | PSNR32.31 | 13 | |
| Video Denoising | Bosch Autodome IP 5000 IR (train) | PSNR36.96 | 10 | |
| Video Denoising | CRVD indoor ISO 1600 | PSNR35.44 | 9 | |
| Video Denoising | CRVD indoor ISO 3200 | PSNR34.37 | 9 | |
| Video Denoising | CRVD indoor ISO 6400 | PSNR31.87 | 9 | |
| Video Denoising | CRVD indoor ISO 12800 | PSNR29.79 | 9 |
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