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Statistical pattern analysis of blood vessel features on retina images and its application to blood vessel mapping algorithms

机译:视网膜图像上血管特征的统计模式分析及其在血管映射算法中的应用

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Computer based modeling and analysis of blood vessel (BV) networks is essential for automated detection and tracking of anomalies and structural changes in retina images. Among many published techniques for automated BV mapping, optimal selection of thresholds to delineate BV pixels from their background pixels remains an open problem. In this paper we propose a novel representation of a BV pixel feature, daisy graph, using rotational contrast transform (RCT), and two feature descriptors energy E and symmetry difference S of the daisy graph. Non-BV pixels are separated from BV and boundary pixels based on E. Fitness of the lognormal distribution to S of BV pixels with negative E has been tested extensively for images in the STARE and DRIVE databases. Based on statistical pattern analysis in the feature space, we propose a fast self-calibrated BV mapping algorithm which achieve comparable and statistically sound performance as contemporary solutions.
机译:基于计算机的血管(BV)网络建模和分析对于自动检测和跟踪异常以及视网膜图像的结构变化至关重要。在许多用于自动BV映射的已发布技术中,最佳选择阈值以从其背景像素描绘出BV像素仍然是一个未解决的问题。在本文中,我们提出了一种新颖的BV像素特征菊花图表示方法,它使用旋转对比度变换(RCT)以及菊花图的两个特征描述符能量E和对称性差S来表示。非BV像素基于E与BV和边界像素分开。对于STARE和DRIVE数据库中的图像,已经对负负E的BV像素的S的对数正态分布对S的适应性进行了广泛测试。基于特征空间中的统计模式分析,我们提出了一种快速的自校准BV映射算法,该算法可实现与当代解决方案相当的统计性能。

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