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Papers/Practical Blind Image Denoising via Swin-Conv-UNet and Dat...

Practical Blind Image Denoising via Swin-Conv-UNet and Data Synthesis

Kai Zhang, Yawei Li, Jingyun Liang, JieZhang Cao, Yulun Zhang, Hao Tang, Deng-Ping Fan, Radu Timofte, Luc van Gool

2022-03-24DenoisingImage DenoisingImage-to-Image Translation
PaperPDFCodeCode(official)

Abstract

While recent years have witnessed a dramatic upsurge of exploiting deep neural networks toward solving image denoising, existing methods mostly rely on simple noise assumptions, such as additive white Gaussian noise (AWGN), JPEG compression noise and camera sensor noise, and a general-purpose blind denoising method for real images remains unsolved. In this paper, we attempt to solve this problem from the perspective of network architecture design and training data synthesis. Specifically, for the network architecture design, we propose a swin-conv block to incorporate the local modeling ability of residual convolutional layer and non-local modeling ability of swin transformer block, and then plug it as the main building block into the widely-used image-to-image translation UNet architecture. For the training data synthesis, we design a practical noise degradation model which takes into consideration different kinds of noise (including Gaussian, Poisson, speckle, JPEG compression, and processed camera sensor noises) and resizing, and also involves a random shuffle strategy and a double degradation strategy. Extensive experiments on AGWN removal and real image denoising demonstrate that the new network architecture design achieves state-of-the-art performance and the new degradation model can help to significantly improve the practicability. We believe our work can provide useful insights into current denoising research.

Results

TaskDatasetMetricValueModel
Denoisingurban100 sigma15Average PSNR35.18SCUNet SCUNet
DenoisingUrban100 sigma50PSNR30.14SCUNet SCUNet
Image Denoisingurban100 sigma15Average PSNR35.18SCUNet SCUNet
Image DenoisingUrban100 sigma50PSNR30.14SCUNet SCUNet
3D Architectureurban100 sigma15Average PSNR35.18SCUNet SCUNet
3D ArchitectureUrban100 sigma50PSNR30.14SCUNet SCUNet

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