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Classic Video Denoising in a Machine Learning World: Robust, Fast, and Controllable

4 April 2025
Xin Jin
Simon Niklaus
Zhoutong Zhang
Zhihao Xia
Chunle Guo
Yuting Yang
J. Chen
Chongyi Li
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Abstract

Denoising is a crucial step in many video processing pipelines such as in interactive editing, where high quality, speed, and user control are essential. While recent approaches achieve significant improvements in denoising quality by leveraging deep learning, they are prone to unexpected failures due to discrepancies between training data distributions and the wide variety of noise patterns found in real-world videos. These methods also tend to be slow and lack user control. In contrast, traditional denoising methods perform reliably on in-the-wild videos and run relatively quickly on modern hardware. However, they require manually tuning parameters for each input video, which is not only tedious but also requires skill. We bridge the gap between these two paradigms by proposing a differentiable denoising pipeline based on traditional methods. A neural network is then trained to predict the optimal denoising parameters for each specific input, resulting in a robust and efficient approach that also supports user control.

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@article{jin2025_2504.03136,
  title={ Classic Video Denoising in a Machine Learning World: Robust, Fast, and Controllable },
  author={ Xin Jin and Simon Niklaus and Zhoutong Zhang and Zhihao Xia and Chunle Guo and Yuting Yang and Jiawen Chen and Chongyi Li },
  journal={arXiv preprint arXiv:2504.03136},
  year={ 2025 }
}
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