A Frequency-Aware Self-Supervised Learning for Ultra-Wide-Field Image Enhancement
Weicheng Liao, Zan Chen, Jianyang Xie, Yalin Zheng, Yuhui Ma, Yitian Zhao

TL;DR
This paper introduces a novel frequency-aware self-supervised learning approach for ultra-wide-field retinal image enhancement, effectively restoring details and illumination for better diagnosis.
Contribution
It presents the first UWF image enhancement method using frequency-aware self-supervised learning with novel modules for deblurring and illumination correction.
Findings
Enhanced visualization quality of UWF images
Improved disease diagnosis accuracy
Effective preservation of fine retinal details
Abstract
Ultra-Wide-Field (UWF) retinal imaging has revolutionized retinal diagnostics by providing a comprehensive view of the retina. However, it often suffers from quality-degrading factors such as blurring and uneven illumination, which obscure fine details and mask pathological information. While numerous retinal image enhancement methods have been proposed for other fundus imageries, they often fail to address the unique requirements in UWF, particularly the need to preserve pathological details. In this paper, we propose a novel frequency-aware self-supervised learning method for UWF image enhancement. It incorporates frequency-decoupled image deblurring and Retinex-guided illumination compensation modules. An asymmetric channel integration operation is introduced in the former module, so as to combine global and local views by leveraging high- and low-frequency information, ensuring the…
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