Retinal vessel segmentation from retinal images is an essential task for developing the computer-aided diagnosis system for retinal diseases. Efforts have been made on high-performance deep learning-based approaches to segment the retinal images in an end-to-end manner. However, the acquisition of retinal vessel images and segmentation labels requires onerous work from professional clinicians, which results in smaller training dataset with incomplete labels. As known, data-driven methods suffer from data insufficiency, and the models will easily over-fit the small-scale training data. Such a situation becomes more severe when the training vessel labels are incomplete or incorrect. In this paper, we propose a Study Group Learning (SGL) scheme to improve the robustness of the model trained on noisy labels. Besides, a learned enhancement map provides better visualization than conventional methods as an auxiliary tool for clinicians. Experiments demonstrate that the proposed method further improves the vessel segmentation performance in DRIVE and CHASE$\_$DB1 datasets, especially when the training labels are noisy.
翻译:视网膜图像中的视网膜容器分解是开发计算机辅助视网膜疾病诊断系统的一项基本任务; 努力采用高性能深深层次的学习方法,以端到端的方式对视网膜图像进行分解; 然而,获取视网膜容器图像和分解标签需要专业临床医生的繁重工作,这导致没有完整标签的小型培训数据集。众所周知,数据驱动方法存在数据不足问题,模型将很容易过度适应小规模培训数据。当培训容器标签不完整或不正确时,这种情况就变得更为严重了。我们在本文件中提议了一个研究小组学习计划,以提高在噪音标签方面受过训练的模型的稳健性。此外,学习的增强图比传统方法更能成为临床医生的辅助工具。实验表明,拟议的方法进一步提高了DVE和CHASE$$DB1 数据集的船舶分解性能,特别是在培训标签吵闹的时候。