TL;DR
This paper introduces a learnable neural network architecture for RAW image denoising that integrates classical self-similarity concepts with a novel nonlocal block, achieving high-quality results efficiently.
Contribution
It proposes a fully learnable, interpretable RAW denoising model with a novel nonlocal block inspired by classical methods, improving generalization and efficiency.
Findings
Achieves competitive results with fewer parameters.
Generalizes well to unseen devices and noise profiles.
Outperforms some state-of-the-art methods on benchmarks.
Abstract
Being one of the oldest and most basic problems in image processing, image denoising has seen a resurgence spurred by rapid advances in deep learning. Yet, most modern denoising architectures make limited use of the technical knowledge acquired researching the classical denoisers that came before the mainstream use of neural networks, instead relying on depth and large parameter counts. This poses a challenge not only for understanding the properties of such networks, but also for deploying them on real devices which may present resource constraints and diverse noise profiles. Tackling both issues, we propose an architecture dedicated to RAW-to-RAW denoising that incorporates the interpretable structure of classical self-similarity-based denoisers into a fully learnable neural network. Our design centers on a novel nonlocal block that parallels the established pipeline of neighbor…
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