Accurate segmentation of the blood vessels of the retina is an important step in clinical diagnosis of ophthalmic diseases. Many deep learning frameworks have come up for retinal blood vessels segmentation tasks. However, the complex vascular structure and uncertain pathological features make the blood vessel segmentation still very challenging. A novel U-shaped network named Multi-module Concatenation which is based on Atrous convolution and multi-kernel pooling is put forward to retinal vessels segmentation in this paper. The proposed network structure retains three layers the essential structure of U-Net, in which the atrous convolution combining the multi-kernel pooling blocks are designed to obtain more contextual information. The spatial attention module is concatenated with dense atrous convolution module and multi-kernel pooling module to form a multi-module concatenation. And different dilation rates are selected by cascading to acquire a larger receptive field in atrous convolution. Adequate comparative experiments are conducted on these public retinal datasets: DRIVE, STARE and CHASE_DB1. The results show that the proposed method is effective, especially for microvessels. The code will be put out at https://github.com/Rebeccala/MC-UNet
翻译:视网膜血管血管的精密分解是临床诊断眼科疾病的一个重要步骤。 许多深层次的学习框架已经为视网膜血管分解任务而出现。 然而,复杂的血管结构和不确定的病理特征使得血管血管分解仍然非常具有挑战性。一个名为多模块集合的新型U形网络,其名称为“多模块组合”,其基础是“振动”和“多内核集合”,在本文件中被引入视网膜容器分解。拟议的网络结构保留了U-Net基本结构的三层。U-Net的基本结构是用来收集更多背景信息的,其中将多内核集合块组合成的突变组合。空间注意模块与浓密的振动模块和多内核集合模块相融合,以形成一个多模块组合。通过岩层分离选择了不同的变相率,以获取更广大的可接受的场。对这些公共视网膜数据集进行了充分的比较试验:DIVIV、STAR和CHASE_DB1。结果显示,拟议的方法是有效的,特别是用于微层/MC的。