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High Intraocular Pressure Detection from Frontal Eye Images: A Machine Learning Based Approach

机译:额外眼睛的高眼压检测:基于机器学习的方法

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This paper presents a novel framework to detect the status of intraocular pressure (normal/high) using solely frontal eye image analysis. The framework is based on machine learning approaches to extract six features from frontal eye images. These features include Pupil/Iris ratio, red area percentage, mean redness level of the sclera, and three novel features from the sclera contour (angle, area and distance). Four hundred frontal eye images were used as the image database. The images were taken and annotated by ophthalmologists at Princess Basma Hospital. The proposed framework is fully automated and once the six features were extracted, two classifiers (decision tree and support vector machine) were applied to obtain the status of the eye in terms of eye pressure. The overall accuracy of the proposed framework is 95.5% using the decision tree classifier.
机译:本文介绍了一种新颖的框架,用于检测人工压力(正常/高)的状态使用完全额外的眼睛图像分析。该框架基于机器学习方法来提取来自额外眼睛图像的六个特征。这些特征包括瞳孔/虹膜比,红色面积百分比,巩膜的平均发红水平,以及来自巩膜轮廓的三种新功能(角度,面积和距离)。四百个正面图像用作图像数据库。通过在巴斯马公主医院的眼科医生进行了拍摄和注释。所提出的框架是完全自动化的,并且一旦提取了六个特征,就应用了两个分类器(决定树和支持向量机)以在眼压方面获得眼睛的状态。使用决策树分类器的建议框架的整体准确性为95.5%。

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