CASISR: Circular Arbitrary-Scale Image Super-Resolution
Honggui Li, Zhengyang Zhang, Dingtai Li, Sinan Chen, Nahid Md Lokman Hossain, Xinfeng Xu, Yinlu Qin, Ruobing Wang, Hantao Lu, Yuting Feng, Maria Trocan, Dimitri Galayko, Amara Amara, Mohamad Sawan

TL;DR
This paper introduces CASISR, a novel closed-loop architecture for arbitrary-scale image super-resolution that improves generalization and reconstruction quality, especially for fractional scales and images with sharp edges.
Contribution
The paper proposes a circular ASISR framework with a mathematical foundation, enhancing super-resolution performance over existing open-loop methods.
Findings
CASISR outperforms eight state-of-the-art ASISR methods in image quality.
It is particularly effective for fractional scale factors and images with drastic edge changes.
The approach is proven stable and reasonable through theoretical analysis.
Abstract
The generalization performance (GP) of deep learning-based arbitrary-scale image super-resolution (ASISR) methods is subject to limited training datasets and unlimited testing datasets. It is vitally significant to enhance the GP of the pretrained ASISR models by making full use of the testing samples. The ASISR models usually employ an open-loop architecture from low-resolution (LR) images to super-resolution (SR) images. The degradation model from SR samples to LR samples is known bicubic down-sampling for the classical ASISR, is supposed down-sampling with additive random noise for the blind ASISR, and is learnable for the real-world ASISR. Combining the ASISR and degradation models, it is potentially possible to adopt a closed-loop architecture based on the automatic control theory for strengthening the GP of the ASISR methods. Therefore, this paper proposes a closed-loop…
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