Retinal vessel segmentation method based on improved U-Net

Yan Zhang, Ke Cheng, Pengcheng Lu
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引用次数: 0

Abstract

Blood vessels are the main anatomical structure of the fundus retina. Retinal blood vessel segmentation images have been widely used in the judgment of cardiovascular and cerebrovascular diseases and retinal diseases. Therefore, appropriate fundus retinal blood vessel segmentation method is of great significance for the detection of retinal diseases. Based on U-Net, the original convolution structure in the encoding part is replaced by the Res-Se module, and the CBAM module is introduced in the skip connection part to achieve fine-grained feature fusion, thereby improving the network's ability to segment the subtle features of retinal vessels. Experiments on the CHASEDB1 dataset show that the proposed model has certain improvements in accuracy, sensitivity, and specificity indicators. This model can more accurately segment retinal vessels and demonstrate better segmentation performance.
基于改进U-Net的视网膜血管分割方法
血管是眼底视网膜的主要解剖结构。视网膜血管分割图像已广泛应用于心脑血管疾病和视网膜疾病的判断。因此,适当的眼底视网膜血管分割方法对于视网膜疾病的检测具有重要意义。基于U-Net,将编码部分原有的卷积结构替换为Res-Se模块,并在跳过连接部分引入CBAM模块,实现细粒度特征融合,从而提高网络对视网膜血管细微特征的分割能力。在CHASEDB1数据集上的实验表明,该模型在准确性、灵敏度和特异性指标上都有一定的提高。该模型可以更准确地分割视网膜血管,具有更好的分割性能。
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