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A New Deeply Convolutional Neural Network Architecture for Retinal Blood Vessel Segmentation

机译:视网膜血管分割的新深度卷积神经网络架构

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This paper proposes an incoming Deep Convolutional Neural Network (CNN) architecture for segmenting retinal blood vessels automatically from fundus images. Automatic segmentation performs a substantial role in computer-aided diagnosis of retinal diseases; it is of considerable significance as eye diseases as well as some other systemic diseases give rise to perceivable pathologic changes. Retinal blood vessel segmentation is challenging because of the excessive changes in the morphology of the vessels on a noisy background. Previous deep learning-based supervised methods suffer from the insufficient use of low-level features which is advantageous in semantic segmentation tasks. The proposed architecture makes use of both high-level features and low-level features to segment retinal blood vessels. The major contribution of the proposed architecture concentrates on two important factors; the first in its supplying of extremely modularized network architecture of aggregated residual connections which enable us to copy the learned layers from the shallower model and developing additional layers to identity mapping. The second is to improve the utilization of computing resources within the network. This is achieved through a skillfully crafted design that allows for increased depth and width of the network while maintaining the stability of its computational budget. Experimental results show the effectiveness of using aggregated residual connections in segmenting retinal vessels more accurately and clearly. Compared to the best existing methods, the proposed method outperformed other existing methods in different measures, comprised less false positives at fine vessels, and caressed more clear lines with sufficient details like the human annotator.
机译:本文提出了一种用于自动从眼底图像分割视网膜血管的深度卷积神经网络(CNN)架构。自动分割在电脑辅助诊断的视网膜疾病中表现了重要作用;作为眼部疾病以及其他一些全身疾病的显着意义具有相当大的意义,导致可感知的病理变化。视网膜血管分割是挑战性,因为噪声背景上的血管的形态过度变化。以前基于深度学习的监督方法遭受了在语义分割任务中有利的低级特征的不充分利用。所提出的架构利用高级功能和低级功能来分段视网膜血管。拟议建筑的主要贡献集中在两个重要因素上;首先提供极其模块化的汇总剩余连接网络架构,使我们能够将学习层从较浅的模型复制并开发到身份映射的附加层。第二是改进网络内计算资源的利用率。这是通过熟练制作的设计实现的,允许增加网络的深度和宽度,同时保持其计算预算的稳定性。实验结果表明,更准确明确地用纤维血管使用聚集残留连接的有效性。与最佳现有方法相比,所提出的方法在不同措施中表现出其他现有方法,包括在细血管下的较少的误报,并且具有足够的细节,如人的注释器等透明线。

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