利用几何特性和GVF检测视盘

S. Giraddi, J. Pujari, P. Hiremath
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引用次数: 10

摘要

视网膜图像中的视盘(OD)分割是计算机检测糖尿病视网膜病变的先决条件,也是监测青光眼等疾病引起的变化的先决条件。OD分割还用于检测其他解剖结构,如中央凹和维管树。基于阈值分割、活动轮廓模型、GVF蛇形和聚类的OD分割算法已经被提出。本文提出了一种新的视盘分割方法。该方法利用P-Tile阈值法检测OD斑块。连接成分分析是为了消除误报而进行的。这一步产生视盘的初始贴片,对其进行质心校正。采用GVF蛇形模型求解外径轮廓。该方法是鲁棒和有效的,即使在低对比度的图像,以及在其他病理结构,如渗出物的存在。实验采用基准视网膜图像数据库diaretdb0、diaretdb1、DRIVE进行。结果表明,diaretdb0的准确率为98%,diaretdb1的准确率为97%,DRIVE的准确率为100%。
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Optic disc detection using geometric properties and GVF snake
The optic disc (OD) segmentation in an retinal image is prerequisite for an computerized detection of diabetic retinopathy and also for monitoring changes due to diseases such as glaucoma. The OD segmentation is also used for the detection of other anatomical structures like fovea and vascular tree. Many algorithms based on thresholding, active contour model, GVF snake and clustering have been proposed for the segmentation of OD. In this study, a novel method is proposed for optic disc segmentation. The method makes use of P-Tile thresholding for detecting patch of OD. Connected component analysis is performed for eliminating false positives. This step yields initial patch of optic disc for which centroid correction is performed. GVF snake model is used for finding the contour of OD. The method is robust and effective even in the low contrast images as well as in the presence of other pathological structures like exudates. The experimentation has been done using benchmark retinal image databases, namely, diaretdb0, diaretdb1, DRIVE. The results show accuracy of 98% with diaretdb0, 97% with diaretdb1 and 100% with DRIVE.
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