视盘的自动定位与轮廓检测

Manish Aggarwal, V. Khare
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引用次数: 9

摘要

本文提出了一种利用KL散度匹配技术进行视网膜图像视盘定位的方法。可见视盘定位和视网膜血管分割被认为是视网膜疾病诊断识别算法[2],[3]的第一步。本文所讨论的算法分为两个阶段。首先在绿色通道上采用中值滤波进行背景估计来检测血管,然后对视网膜图像进行形态学处理。结构元素(SE)的选择方法是只检测主血管。第二阶段涉及OD的定位。利用视点在视网膜图像中最亮部分的特性对视点进行定位,采用KL散度法进行直方图匹配,然后进行主血管验证。为了评估所提出的算法,我们使用了DRIVE公开的眼底图像数据库,该数据库包含40幅图像,在OD上的定位精度达到100%,并且在STARE数据库的20幅图像上,我们对其中18幅图像的OD进行了准确定位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic localization and contour detection of Optic disc
In this paper a method for localizing optic disc in retinal images using KL divergence matching technique followed by main vessel detection is proposed. It is seen that localization of the optic disc and retina vessel segmentation is considered as the first step of retinal disease diagnosis and identification algorithm [2], [3]. In this paper algorithm discussed consist of two stages. The first stage is detection of blood vessels using median filtering for background estimation on green channel followed by morphological operation on retinal images. Structural element (SE) is selected in such a way that only main blood vessels are detected. The second stage involves localization of OD. For localization of OD its property of being most bright portion of retinal image is used and histogram matching approach using KL divergence method followed by main vessel verification is used. To evaluate the proposed algorithm we use DRIVE publicly available eye fundus image databases contains 40 images and it achieves accuracy of 100% in locating a point in OD and also on 20 images of STARE database out of which we localize OD in 18 images accurately.
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