The precise detection of blood vessels in retinal images is crucial to the early diagnosis of the retinal vascular diseases, e.g., diabetic, hypertensive and solar retinopathies. Existing works often fail in predicting the abnormal areas, e.g, sudden brighter and darker areas and are inclined to predict a pixel to background due to the significant class imbalance, leading to high accuracy and specificity while low sensitivity. To that end, we propose a novel error attention refining network (ERA-Net) that is capable of learning and predicting the potential false predictions in a two-stage manner for effective retinal vessel segmentation. The proposed ERA-Net in the refine stage drives the model to focus on and refine the segmentation errors produced in the initial training stage. To achieve this, unlike most previous attention approaches that run in an unsupervised manner, we introduce a novel error attention mechanism which considers the differences between the ground truth and the initial segmentation masks as the ground truth to supervise the attention map learning. Experimental results demonstrate that our method achieves state-of-the-art performance on two common retinal blood vessel datasets.
翻译:在视网膜图像中准确检测血管血管血管疾病,例如糖尿病、高血压和太阳视网膜病,对于及早诊断视网膜血管疾病至关重要,现有的工程往往无法预测异常地区,例如突然更亮和更暗的地区,并倾向于预测背景的像素,原因是阶级严重失衡,导致高度准确和特殊性,同时敏感度低。为此,我们提议建立一个新的错误关注精炼网络(ERA-Net),能够以两阶段的方式学习和预测可能的假预测,以有效视网膜船只分解。在精细阶段,拟议的ERA-Net推动模型注重和完善初始培训阶段产生的分解错误。为了实现这一目标,与以往大多数关注方法不同,我们采用了一种新的错误关注机制,将地面真相与最初的分解面具之间的差异视为监测注意地图学习的地面真相。实验结果表明,我们的方法在两个普通的视网膜血管数据装置上达到了状态。