Performing high accuracy of the system for cataract detection using statistical texture analysis and K-Nearest Neighbor

Y. Fuadah, A. W. Setiawan, T. Mengko
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引用次数: 21

Abstract

Early detection of cataract considered as an important solution to prevent the increasing number of cataract in developing country, especially in Indonesia. A cataract will be a serious public health problem as a leading cause of blindness if there is a delay in handling it. In this paper, we discuss about the performing high accuracy of the system for cataract detection using statistical texture analysis and K-Nearest Neighbor (K-NN). In training steps, the feature extraction method uses Gray Level Co-occurrence Matrix (GLCM) to get the texture feature value of contrast, dissimilarity and uniformity that appearance in the pupil area of the training images. In testing steps, the testing images will be classified using K-NN method to normal or cataract condition. Based on the result of 10 times experiments for 160 eyes images that consist of 40 normal images and 40 cataract images as the training data and 40 normal images and 40 cataract images as the testing data, the statistical texture analysis and K-NN perform high accuracy for detecting cataract with average accuracy 94.5%.
利用统计纹理分析和k -最近邻对系统进行高精度的白内障检测
在发展中国家,特别是印度尼西亚,早期发现白内障被认为是防止白内障数量不断增加的重要解决方案。如果处理不当,白内障将成为严重的公共卫生问题,成为致盲的主要原因。本文讨论了利用统计纹理分析和k -最近邻(K-NN)来实现白内障检测系统的高精度。在训练步骤中,特征提取方法使用灰度共生矩阵(GLCM)来获取训练图像瞳孔区域中出现的对比度、不相似性和均匀性的纹理特征值。在测试步骤中,使用K-NN方法将测试图像分类为正常或白内障状态。基于对160张眼睛图像进行10次实验的结果,其中40张正常图像和40张白内障图像作为训练数据,40张正常图像和40张白内障图像作为测试数据,统计纹理分析和K-NN对白内障的检测准确率较高,平均准确率为94.5%。
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