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Optic Disc Localization using Local Vessel Based Features and Support Vector Machine

机译:光盘本地化使用本地船舶的特点和支持向量机

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Optic disc is one of the fundamental regions located in the internal retina that helps ophthalmologists in analysis and early diagnosis of many retinal diseases such as optic atrophy, optic neuritis, papilledema, ischemic optic neuropathy, glaucoma and diabetic retinopathy. An accurate and early diagnosis requires an accurate optic disc examination. Presence of different retinal abnormalities and non-uniform illumination make optic disc localization a challenging task. There is a need to detect and localize optic disc from fundus images with high accuracy to make the diagnosis using Computer Aided Systems developed for ophthalmic disease diagnosis more reliable. Proposed algorithm provides a novel optic disc localization and segmentation technique that detects multiple candidate optic disc regions from fundus image using enhancement and segmentation. The proposed system then extracts a hybrid feature set for each candidate region consisting of vessel based and intensity based features which are finally fed to SVM classifier. Final decision of Optic disc region is done after computing Manhattan distance from the mean of training data feature matrix. The evaluation of proposed system has been done on publicly available datasets and one local dataset and results shows the validity of proposed system.
机译:光盘是内部视网膜中的基本区域之一,有助于眼科医生分析和早期诊断许多视网膜疾病,如光学萎缩,视神经炎,乳头肿瘤,缺血视神经病,青光眼和糖尿病视网膜病变。准确和早期的诊断需要准确的视盘检查。不同视网膜异常的存在和非均匀照明使视光盘定位成为一个具有挑战性的任务。需要从眼底图像检测和本地化光盘,以高精度地使用开发的计算机辅助系统进行诊断,用于眼科疾病诊断更可靠。所提出的算法提供了一种新颖的光盘定位和分割技术,其使用增强和分割来检测来自眼底图像的多个候选光盘区域。然后,所提出的系统提取用于每个候选区域的混合特征,该候选区域由基于血管和基于强度的特征组成,该特征最终馈送到SVM分类器。在从训练数据特征矩阵的平均值计算曼哈顿距离之后,光盘区域的最终决定是在计算曼哈顿距离之后完成的。对所提出的系统的评估已经在公开可用的数据集中完成,一个本地数据集和结果显示了所提出的系统的有效性。

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