School of Computer Science and Engineering, Vellore Institute of Technology, Chennai 600127, India.
Department of Information Technology, Velammal Engineering College, Chennai 600066, India.
Math Biosci Eng. 2024 Feb 29;21(3):4742-4761. doi: 10.3934/mbe.2024208.
Delineation of retinal vessels in fundus images is essential for detecting a range of eye disorders. An automated technique for vessel segmentation can assist clinicians and enhance the efficiency of the diagnostic process. Traditional methods fail to extract multiscale information, discard unnecessary information, and delineate thin vessels. In this paper, a novel residual U-Net architecture that incorporates multi-scale feature learning and effective attention is proposed to delineate the retinal vessels precisely. Since drop block regularization performs better than drop out in preventing overfitting, drop block was used in this study. A multi-scale feature learning module was added instead of a skip connection to learn multi-scale features. A novel effective attention block was proposed and integrated with the decoder block to obtain precise spatial and channel information. Experimental findings indicated that the proposed model exhibited outstanding performance in retinal vessel delineation. The sensitivities achieved for DRIVE, STARE, and CHASE_DB datasets were 0.8293, 0.8151 and 0.8084, respectively.
眼底图像中的视网膜血管描绘对于检测多种眼部疾病至关重要。血管分割的自动化技术可以帮助临床医生提高诊断效率。传统方法无法提取多尺度信息、丢弃不必要的信息以及描绘细血管。本文提出了一种新的基于残差 U-Net 的架构,该架构结合了多尺度特征学习和有效的注意力机制,可以精确地描绘视网膜血管。由于 Drop Block 正则化在防止过拟合方面比 Dropout 表现更好,因此在本研究中使用了 Drop Block。添加了多尺度特征学习模块而不是跳过连接来学习多尺度特征。提出了一种新的有效注意力模块,并将其与解码器块集成,以获得精确的空间和通道信息。实验结果表明,所提出的模型在视网膜血管描绘方面表现出色。在 DRIVE、STARE 和 CHASE_DB 数据集上的灵敏度分别为 0.8293、0.8151 和 0.8084。