The quality of a fundus image can be compromised by numerous factors, many of which are challenging to be appropriately and mathematically modeled. In this paper, we introduce a novel diffusion model based framework, named Learning Enhancement from Degradation (LED), for enhancing fundus images. Specifically, we first adopt a data-driven degradation framework to learn degradation mappings from unpaired high-quality to low-quality images. We then apply a conditional diffusion model to learn the inverse enhancement process in a paired manner. The proposed LED is able to output enhancement results that maintain clinically important features with better clarity. Moreover, in the inference phase, LED can be easily and effectively integrated with any existing fundus image enhancement framework. We evaluate the proposed LED on several downstream tasks with respect to various clinically-relevant metrics, successfully demonstrating its superiority over existing state-of-the-art methods both quantitatively and qualitatively. The source code is available at https://github.com/QtacierP/LED.
翻译:Fundus图像的质量可能受到多种因素的损害,其中许多因素是难以适当和数学模型的难题。在本文中,我们引入了一个新的基于传播模型的框架,名为“从退化中学习增强”,用于增强Fundus图像。具体地说,我们首先采用数据驱动的退化框架,以学习从未经保护的高质到低质的降解图谱;然后我们采用有条件的传播模型,以对齐的方式学习反向增强过程。拟议的LED能够产出增强结果,保持临床上很重要的特征更加清晰。此外,在推断阶段,LED可以容易和有效地与任何现有的Fundus图像增强框架结合。我们评估了就各种临床相关指标提出的LED的多项下游任务,成功地展示了它在定量和定性两方面优于现有最新工艺方法的优势。源代码见https://github.com/QtacierP/LED。</s>