基于支持向量机的糖尿病眼病热图像自动检测方法

D. Selvathi, K. Suganya
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引用次数: 14

摘要

糖尿病性眼病是世界范围内的主要眼病之一。这可能会对眼睛造成严重损害,包括永久性失明。眼病的早期发现通过成功的治疗提高了生存率。提出的方法是探索机器学习技术,利用眼睛的热成像图像检测糖尿病病变,并引入眼睛结构异常的热变化影响作为诊断成像模式,有助于眼科医生进行临床诊断。首先对热图像进行预处理,然后提取基于灰度共生矩阵(GLCM)的灰度图像纹理特征、RGB和HSI图像的统计特征,并使用各种特征组合的分类器进行分类。为了检测糖尿病病变眼,本文采用支持向量机分类器进行分类,并对其性能进行比较。为了提高方法的泛化能力,采用了五重交叉验证方案。实验结果表明,各种特征组合的最高准确率为86。22%,灵敏度为94。特异性为79。17%使用五重验证的SVM分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support Vector Machine Based Method for Automatic Detection of Diabetic Eye Disease using Thermal Images
Diabetic eye disease is one of the major problems worldwide. That can cause major impairment to the eyes, including a permanent loss of vision. Early detection of eye diseases increase the survival rate by successful treatment. The proposed methodology is to explore machine learning technique to detect diabetic diseased using thermography images of an eye and to introduce the effect of thermal variation of abnormality in the eye structure as a diagnosis imaging modality which are useful for ophthalmologists to do the clinical diagnosis. Thermal images are pre-processed, and then Gray Level Co-occurrence Matrix (GLCM) based texture features from gray images, statistical features from RGB and HSI images are extracted and classified using classifier with various combination of features. To detect diabetic diseased eye, here Support Vector Machine classifier is used for classification and their performance are compared. A 5-fold cross validation scheme is used to enhance the generalization capability of the proposed method. Experimental results obtained for various feature combinations gives maximum accuracy of 86. 22%, sensitivity of 94. 07% and specificity of 79. 17% using SVM classifier with five-fold validation.
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