Vessel Segmentation from Color Retinal Images with Varying Contrast and Central Reflex Properties

A. Bhuiyan, R. Kawasaki, E. Lamoureux, T. Wong, K. Ramamohanarao
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引用次数: 7

Abstract

Clinical research suggests that changes in the retinal blood vessels (e.g., vessel caliber) are important indicators for earlier diagnosis of diabetes and cardiovascular diseases. Reliable vessel detection or segmentation is a prerequisite for quantifiable retinal blood vessel analysis for predicting these diseases. However, the segmentation of blood vessels is complicated by its huge variations such as abrupt changes in local contrast, a wide range of vessel width and central reflex in the vessel. In this paper, we propose a novel technique to detect retinal blood vessels which is able to address these issues. The core of the technique is a new vessel edge tracking method which combines the method of finding pattern of vessel start point and pixel grouping and profiling techniques. An edge profile checking method is developed for filtering noise and other objects, and tracking the real vessel edges. From the filtered edges a rule based technique is adopted for grouping the edges of individual vessels. Experimental results show that 92.4% success rate in the identification of vessel start-points and 82.01% success rate in tracking the major vessels.
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基于不同对比度和中央反射特性的彩色视网膜图像血管分割
临床研究表明,视网膜血管的变化(如血管口径)是早期诊断糖尿病和心血管疾病的重要指标。可靠的血管检测或分割是定量视网膜血管分析预测这些疾病的先决条件。然而,由于局部对比度变化突然、血管宽度范围大、血管中枢反射等变化较大,使得血管分割变得复杂。在本文中,我们提出了一种新的技术来检测视网膜血管,能够解决这些问题。该技术的核心是一种新的船舶边缘跟踪方法,该方法将船舶起点模式查找方法与像素分组和轮廓技术相结合。提出了一种边缘轮廓检测方法,用于滤波噪声和其他物体,跟踪真实船舶边缘。从滤波后的边缘中,采用基于规则的方法对单个血管的边缘进行分组。实验结果表明,该方法对血管起始点的识别成功率为92.4%,对主要血管的跟踪成功率为82.01%。
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