As an economical and efficient fundus imaging modality, retinal fundus images have been widely adopted in clinical fundus examination. Unfortunately, fundus images often suffer from quality degradation caused by imaging interferences, leading to misdiagnosis. Despite impressive enhancement performances that state-of-the-art methods have achieved, challenges remain in clinical scenarios. For boosting the clinical deployment of fundus image enhancement, this paper proposes the pyramid constraint to develop a degradation-invariant enhancement network (PCE-Net), which mitigates the demand for clinical data and stably enhances unknown data. Firstly, high-quality images are randomly degraded to form sequences of low-quality ones sharing the same content (SeqLCs). Then individual low-quality images are decomposed to Laplacian pyramid features (LPF) as the multi-level input for the enhancement. Subsequently, a feature pyramid constraint (FPC) for the sequence is introduced to enforce the PCE-Net to learn a degradation-invariant model. Extensive experiments have been conducted under the evaluation metrics of enhancement and segmentation. The effectiveness of the PCE-Net was demonstrated in comparison with state-of-the-art methods and the ablation study. The source code of this study is publicly available at https://github.com/HeverLaw/PCENet-Image-Enhancement.
翻译:作为一种经济和高效的基金成像模式,在临床基金检查中广泛采用视网膜基金图象,不幸的是,基金状图象往往由于成象干扰而导致质量退化,导致误判。尽管最先进的方法取得了令人印象深刻的提高性能,但在临床假设中仍然存在挑战。为了促进基金图象增强的临床部署,本文件提议金字塔限制发展一个退化-变异增强网络(PCE-Net),以缓解对临床数据的需求,并准确地增加未知数据。首先,高质量图象随机退化,形成共享相同内容(SeqLCs)的低质量图象序列。然后,个人低质量图象与LAPLCian金字塔特征(LPF)脱钩,作为多层次的增强投入。随后,为了实施PCE-Net(PCE-Net)来学习退化-变异模型,本文件建议采用一个特质的金字塔质限制。在加强和分解的评估指标下进行了广泛的实验。PCE-Net(Sequal-Net)的功效是公开的比较方法。