An Efficient System for Diagnosis of Human Blindness Using Image-Processing and Machine-Learning Methods

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
S. Alomari
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Abstract

The two main causes of blindness are diabetes and glaucoma. Routine diagnosis of blindness is based on the conventional robust mass-screening method. However, despite being cost-effective, this method has some problems as a human eye-disease detection method because there are many types of eye disease that are similar or that result in no visual changes in the eye image. These issues make it highly difficult to recognize blindness and control it. Moreover, the color of the macula of the spot can be very close to that of the affected macula in a variety of eye diseases, which suggests that the color of the macula spot can indicate various possibilities, rather than one. This paper discusses the shortcomings of current blindness-screening and monitoring systems and presents a feature-based blindness diagnosis approach using digital eye fundus images for the purpose of automated diagnosis of eye disorders, considering three conditions: healthy eye, diabetic retinopathy (DR), and glaucoma. As such, this paper develops a computer-aided diagnosis (CAD) method for automated detection of human blindness. The proposed approach integrates Gabor filter features, statistical features, colored features, morphological features, and local binary pattern features, then compares them with features drawn from a standard dataset of 1580 fundus images. Several classification techniques were applied to the extracted-features neural network (NN), support vector machine (SVM), naïve bias (NB). SVM classifiers show the most promising accuracy. They achieved 93.3% over the other classifiers.
一种基于图像处理和机器学习方法的高效人眼失明诊断系统
失明的两个主要原因是糖尿病和青光眼。盲的常规诊断是基于常规的健壮的大规模筛查方法。然而,尽管该方法具有成本效益,但由于有许多类型的眼病相似或不会导致眼睛图像的视觉变化,因此该方法作为人类眼病检测方法存在一些问题。这些问题使得识别和控制失明变得非常困难。而且,在各种眼病中,斑点的黄斑颜色可以与受影响的黄斑颜色非常接近,这表明黄斑斑点的颜色可以指示多种可能性,而不是一种可能性。本文讨论了当前失明筛查和监测系统的缺点,并提出了一种基于特征的失明诊断方法,该方法使用数字眼底图像来自动诊断眼部疾病,考虑到三种情况:健康眼睛,糖尿病视网膜病变(DR)和青光眼。因此,本文开发了一种用于人类失明自动检测的计算机辅助诊断(CAD)方法。该方法集成了Gabor滤波特征、统计特征、彩色特征、形态特征和局部二值模式特征,并将其与1580张眼底图像的标准数据集中提取的特征进行比较。将几种分类技术应用于特征提取神经网络(NN)、支持向量机(SVM)、naïve bias (NB)。支持向量机分类器显示出最有希望的准确率。与其他分类器相比,它们的准确率达到了93.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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