Progressive Transfer Learning for Multi-Pass Fundus Image Restoration
Journal:
arXiv
Published Date:
Apr 14, 2025
Abstract
Diabetic retinopathy is a leading cause of vision impairment, making its
early diagnosis through fundus imaging critical for effective treatment
planning. However, the presence of poor quality fundus images caused by factors
such as inadequate illumination, noise, blurring and other motion artifacts
yields a significant challenge for accurate DR screening. In this study, we
propose progressive transfer learning for multi pass restoration to iteratively
enhance the quality of degraded fundus images, ensuring more reliable DR
screening. Unlike previous methods that often focus on a single pass
restoration, multi pass restoration via PTL can achieve a superior blind
restoration performance that can even improve most of the good quality fundus
images in the dataset. Initially, a Cycle GAN model is trained to restore low
quality images, followed by PTL induced restoration passes over the latest
restored outputs to improve overall quality in each pass. The proposed method
can learn blind restoration without requiring any paired data while surpassing
its limitations by leveraging progressive learning and fine tuning strategies
to minimize distortions and preserve critical retinal features. To evaluate
PTL's effectiveness on multi pass restoration, we conducted experiments on
DeepDRiD, a large scale fundus imaging dataset specifically curated for
diabetic retinopathy detection. Our result demonstrates state of the art
performance, showcasing PTL's potential as a superior approach to iterative
image quality restoration.