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Classification of Artery and Vein in Retinal Fundus Images Based on the Context-Dependent Features

机译:基于上下文相关特征的眼底图像中动脉和静脉的分类

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In this paper, we present an automatic method based on context-dependent characteristics for the detection and classification of arterial vessels and venous vessels in retinal fundus images. It provides a non-invasive opportunity and effective foundation for the diagnosis of several medical pathologies. In the proposed method, a combination of shifted filter responses is used, which can selectively respond to vessels. It achieves orientation selectivity by computing the weighted geometric mean of the output of a pool of Difference-of-Gaussian filters, whose supports are aligned in a collinear manner. We then configure two combinations of shifted filters, namely symmetric and asymmetric, that are selective for bars and bar-endings, respectively. We achieve vessel detection by summing up the responses of the two filters. Then we extract the morphology and topological characteristics based on the vessel segmentation, and specifically present context-dependent features of blood vessels, including the shape, structure, relative position, context information and other important features. Based on these features, we use JointBoost classifier to construct potential function for conditional random fields (CRFs) model, and train the labeled samples to classify arteriovenous blood vessels in retinal images. The training and testing data sets were prepared according to the results based on DRIVE dataset provided by Estrada et al. The experimental results show that the accuracy of the proposed method for vein and artery detection is 91.1% and 94.5%, respectively, which is superior to that of the state-of-the-art methods. It can be used as a clinical reference for computer-assisted quantitative analysis of fundus images.
机译:在本文中,我们提出了一种基于上下文相关特征的自动方法,用于视网膜眼底图像中的动脉血管和静脉血管的检测和分类。它为多种医学病理的诊断提供了非侵入性的机会和有效的基础。在提出的方法中,使用了移位滤波器响应的组合,可以选择性地响应血管。它通过计算高斯差滤波器池的输出的加权几何平均值来实现方向选择性,高斯差分滤波器池的支持以共线方式对齐。然后,我们配置移位滤波器的两个组合,即对称和非对称,分别对条形图和条形图结束进行选择。我们通过对两个过滤器的响应求和来实现血管检测。然后,基于血管分割提取形态和拓扑特征,并具体呈现血管的上下文相关特征,包括形状,结构,相对位置,上下文信息和其他重要特征。基于这些特征,我们使用JointBoost分类器构造条件随机场(CRF)模型的潜在功能,并训练标记的样本对视网膜图像中的动静脉血管进行分类。根据基于Estrada等人提供的DRIVE数据集的结果,准备了训练和测试数据集。实验结果表明,提出的静脉和动脉检测方法的准确度分别为91.1%和94.5%,优于最新方法。它可以用作计算机辅助定量分析眼底图像的临床参考。

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