AGC-UNet:一种基于U-Net的全局上下文特征融合视网膜血管分割方法

Xueyin Fu, Ning Zhao
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引用次数: 2

摘要

计算机辅助视网膜血管分割在高血压、视网膜血管闭塞、糖尿病等疾病的诊断中具有不可替代的作用。本文提出了一种基于U-Net的全局上下文特征融合视网膜血管分割模型,命名为AGC-UNet,该模型利用编解码网络,在编解码路径中使用全局上下文块(global context Block, GCB)增强血管特征的全局上下文融合,并且没有引入大量的计算量。此外,在跳跃连接部分加入注意门块(Attention Gate Block, AGB),增强血管特征的空间提取能力,减弱对无关区域的学习能力,提高血管分割能力。在开放数据集DRIVE和CHASE_DB1中分别经历AGC-UNet模型,两个数据集的准确度(Acc)评价指标分别为0.9653和0.9646,灵敏度(Se)为0.8347和0.8206,特异性(Sp)为0.9851和0.9791,F1- score (F1)为0.8639和0.8095。与现有的最新方法相比,该方法在视网膜血管分割方面具有突出的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AGC-UNet:A Global Context Feature Fusion Method Based On U-Net for Retinal Vessel Segmentation
Computer-aided retinal vascular segmentation plays an irreplaceable role in the diagnosis of hypertension, retinal vascular occlusion, diabetic and other diseases. In this paper, we propose a global context feature fusion retinal vessel segmentation model based on U-Net, named AGC-UNet, which utilizes the encoding and decoding network, and uses Globle Context Block (GCB) in the encoding and decoding path to enhance the global context fusion of vascular features, and did not introduce a large amount of computation. In addition, Attention Gate Block(AGB) is added into the jump connection part to enhance the spatial extraction ability of vascular features, to weaken the ability of learning unrelated areas, and to improve the ability of vascular segmentation. AGC-UNet model is experienced respectively in the open datasets DRIVE and CHASE_DB1 and evaluating indicators of accuracy(Acc) in these two datasets are 0.9653 and 0.9646 respectively, 0.8347 and 0.8206 in sensitivity(Se), 0.9851 and 0.9791 in specificity(Sp) and 0.8639 and 0.8095 in F1-Score(F1). Compared with the newest existing methods, this method performs an outstanding performance in retinal vascular segmentation.
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