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Glaucoma Detection Using Enhanced K-Strange Points Clustering Algorithm and Classification

机译:青光眼检测使用增强型K-STRANGE点聚类算法和分类

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摘要

Glaucoma is an eye disorder that majorly affects the optic nerve head in the retina. The damage caused to optic disc leads to gradual loss of peripheral vision which may further result in complete blindness. Glaucoma cannot be cured, hence early and accurate detection is necessary. This paper proposes a method to detect Glaucoma using fundus images. Enhanced K-Strange Points Clustering (EKSTRAP) algorithm is applied to obtain cup, disc and the blood vessels from the Neuro-Retinal Rim (NRR). Further elliptical fitting method is used to compute cup to disc (CDR) ratio. The Inferior-Superior-Nasal-Temporal (ISNT) ratio is obtained using masking. CDR and ISNT are used as inputs to the Naive Bayes classifier.
机译:青光眼是一种眼部疾病,主要影响视网膜中的视神经头部。 对光盘引起的损坏导致外围视觉逐渐丧失,这可能进一步导致完全失明。 青光眼无法治愈,因此早期和准确的检测是必要的。 本文提出了一种使用眼底图像检测青光眼的方法。 增强的K级别点聚类(EKSTRAP)算法用于从神经视网膜边缘(NRR)获得杯,盘和血管。 进一步的椭圆形配合方法用于计算到盘(CDR)比率的杯子。 使用掩模获得劣等的鼻颞(ISNT)比率。 CDR和ISNT被用作天真贝叶斯分类器的输入。

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