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Michele Claus; Jan van Gemert

Abstract
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.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| color-image-denoising-on-cbsd68-sigma10 | Spatial-CNN | PSNR: 35.92 |
| color-image-denoising-on-cbsd68-sigma15 | Spatial-CNN | PSNR: 33.66 |
| color-image-denoising-on-cbsd68-sigma25 | Spatial-CNN | PSNR: 30.99 |
| color-image-denoising-on-cbsd68-sigma35 | Spatial-CNN | PSNR: 29.34 |
| color-image-denoising-on-cbsd68-sigma5 | Spatial-CNN | PSNR: 39.73 |
| color-image-denoising-on-cbsd68-sigma50 | Spatial-CNN | PSNR: 27.63 |
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