Suppressing Uncertainties in Degradation Estimation for Blind Super-Resolution
Junxiong Lin, Zeng Tao, Xuan Tong, Xinji Mai, Haoran Wang, Boyang, Wang, Yan Wang, Qing Zhao, Jiawen Yu, Yuxuan Lin, Shaoqi Yan, Shuyong Gao,, Wenqiang Zhang

TL;DR
This paper introduces a novel self-supervised framework for blind image super-resolution that suppresses degradation uncertainties, enabling more accurate high-resolution image recovery from complex, real-world degraded images.
Contribution
It proposes an uncertainty-based degradation representation and a self-supervised learning approach, overcoming limitations of explicit degradation modeling in blind super-resolution.
Findings
Outperforms existing methods in quantitative metrics.
Effectively handles complex real-world degradations.
Demonstrates superior qualitative image restoration results.
Abstract
The problem of blind image super-resolution aims to recover high-resolution (HR) images from low-resolution (LR) images with unknown degradation modes. Most existing methods model the image degradation process using blur kernels. However, this explicit modeling approach struggles to cover the complex and varied degradation processes encountered in the real world, such as high-order combinations of JPEG compression, blur, and noise. Implicit modeling for the degradation process can effectively overcome this issue, but a key challenge of implicit modeling is the lack of accurate ground truth labels for the degradation process to conduct supervised training. To overcome this limitations inherent in implicit modeling, we propose an \textbf{U}ncertainty-based degradation representation for blind \textbf{S}uper-\textbf{R}esolution framework (\textbf{USR}). By suppressing the uncertainty of…
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Taxonomy
TopicsImage Processing Techniques and Applications · Integrated Circuits and Semiconductor Failure Analysis · Optical measurement and interference techniques
MethodsConvolution
