Rotation Equivariant Arbitrary-scale Image Super-Resolution
Qi Xie, Jiahong Fu, Zongben Xu, Deyu Meng

TL;DR
This paper introduces a rotation equivariant approach to arbitrary-scale image super-resolution, improving the preservation of geometric patterns and structural integrity in high-resolution outputs.
Contribution
It designs a novel rotation equivariant architecture for ASISR, enabling end-to-end rotation-invariant super-resolution with theoretical analysis and practical validation.
Findings
Enhanced preservation of geometric patterns in super-resolved images
The method can be integrated into existing ASISR frameworks
Experimental results show improved performance on real datasets
Abstract
The arbitrary-scale image super-resolution (ASISR), a recent popular topic in computer vision, aims to achieve arbitrary-scale high-resolution recoveries from a low-resolution input image. This task is realized by representing the image as a continuous implicit function through two fundamental modules, a deep-network-based encoder and an implicit neural representation (INR) module. Despite achieving notable progress, a crucial challenge of such a highly ill-posed setting is that many common geometric patterns, such as repetitive textures, edges, or shapes, are seriously warped and deformed in the low-resolution images, naturally leading to unexpected artifacts appearing in their high-resolution recoveries. Embedding rotation equivariance into the ASISR network is thus necessary, as it has been widely demonstrated that this enhancement enables the recovery to faithfully maintain the…
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