Automatic localization of the optic disc in retinal fundus images using multiple features

T. Qureshi, Hassan Amin, M. Hussain, R. Qureshi, B. Al-Diri
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引用次数: 13

Abstract

Accurate optic disc localization is an essential step for a reliable retinal screening system. Existing methods for the optic disc localization may fail when encountering distractors such as imprecise boundaries, deceptive edge features and inconsistent contrast in retinal images. This paper presents an algorithm (Multi-Scheme method) for localization of the optic disc. The algorithm involves prior domain knowledge such as the optic disc size, cup-to-disc ratio (CDR) and vessel convergence feature to evaluate the confidence level for the candidate region(s) at each thresholding level. Based on the confidence level, the algorithm heuristically decides whether or not to opt for multi-scheme policy for a given image. For optimization, the Computed Response (CR) from variant versions of the same image is calculated in parallel and fits a contour to the optic disc through an iterative process of updating the location of the centre of the contour. The proposed approach has been validated using dataset ONHSD [3] and diaretdb0 [16]; and the results show the robustness and reliability of the proposed method even in the presence of distractors.
基于多特征的眼底图像视盘自动定位
准确的视盘定位是建立可靠的视网膜筛查系统的必要步骤。现有的视盘定位方法在遇到视网膜图像中边界不精确、边缘特征具有欺骗性、对比度不一致等干扰因素时可能会失败。本文提出了一种视盘定位算法(Multi-Scheme method)。该算法利用视盘大小、杯盘比(CDR)和血管收敛特征等先验领域知识,在每个阈值水平上评估候选区域的置信度。该算法基于置信度,启发式地决定是否对给定图像选择多方案策略。为了优化,从同一图像的不同版本并行计算计算响应(CR),并通过更新轮廓中心位置的迭代过程拟合一个轮廓到视盘。采用数据集ONHSD[3]和diaretdb0[16]对该方法进行了验证;实验结果表明,即使存在干扰物,该方法也具有较好的鲁棒性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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