Bridging Restoration and Diagnosis: A Comprehensive Benchmark for Retinal Fundus Enhancement
Xuanzhao Dong, Wenhui Zhu, Xiwen Chen, Hao Wang, Xin Li, Yujian Xiong, Jiajun Cheng, Zhipeng Wang, Shao Tang, Oana Dumitrascu, Yalin Wang

TL;DR
This paper introduces EyeBench-V2, a comprehensive benchmark for retinal fundus image enhancement that evaluates models on clinical relevance, expert-guided assessments, and practical downstream tasks.
Contribution
The work presents a multi-dimensional evaluation framework, a curated dataset for fair comparison, and insights to guide future clinically aligned enhancement models.
Findings
Standard metrics fail to capture clinical features
Expert-guided evaluation reveals model limitations
Benchmark enables informed model selection for clinical use
Abstract
Over the past decade, generative models have demonstrated success in enhancing fundus images. However, the evaluation of these models remains a challenge. A benchmark for fundus image enhancement is needed for three main reasons:(1) Conventional denoising metrics such as PSNR and SSIM fail to capture clinically relevant features, such as lesion preservation and vessel morphology consistency, limiting their applicability in real-world settings; (2) There is a lack of unified evaluation protocols that address both paired and unpaired enhancement methods, particularly those guided by clinical expertise; and (3) An evaluation framework should provide actionable insights to guide future advancements in clinically aligned enhancement models. To address these gaps, we introduce EyeBench-V2, a benchmark designed to bridge the gap between enhancement model performance and clinical utility. Our…
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