基于灰度共生矩阵和反向传播神经网络的隐藏神经元检测白内障

Tiara Sri Mulati, Fitri Utaminingrum
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引用次数: 3

摘要

白内障是一种晶状体混浊的疾病。白内障最常见的原因是衰老过程。其他几种情况也会导致晶状体白内障,比如糖尿病和吸烟。它会导致视力下降直至失明。白内障是印尼乃至全世界致盲的头号原因。白内障致盲率相对较高,因为很多患者并不知道。因此,需要一种检测白内障的系统,以便迅速采取进一步的行动。农村地区缺乏医务人员和医疗设备。该方法有望成为医生检测眼病,特别是白内障,快速治疗患者的方法。提出了将灰度共生矩阵(GLCM)作为特征提取与反向传播神经网络(BPNN)分类相结合的方法。该方法采用了对比度、均匀性、相关性和能量四个特征。GLCM的角取向是基于0°、45°、90°、135°四个角方向形成的,像素之间的距离是1、2、3、4。准确率最高的是9个隐藏神经元,4个输入层,2个输出层,准确率为0.824。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hidden Neuron Analysis for Detection Cataract Disease Based on Gray Level Co-occurrence Matrix and Back Propagation Neural Network
A cataract is a disease when the lens of the eye becomes cloudy. The most common cause of cataracts is the aging process. Several other conditions can cause cataracts in the lens of the eye, such as diabetes and smoking. It will be caused the decreased vision until blindness. Cataracts are the number one cause of blindness in Indonesia and the world. Blindness due to cataracts is relatively high because many sufferers do not know it. Because of that, a system for detecting cataracts is needed for taking further action quickly. The availability of medical officers and equipment is deficient in rural areas. The proposed method is expected to function as a doctor in detecting eye diseases, especially cataracts, to treat patients quickly. The combination of Gray Level Co-occurrence Matrix (GLCM) as feature extraction and Back-propagation Neural Network (BPNN) classification has been proposed. The proposed method uses four features GLCM, which are contrast, homogeneity, correlation, and energy. The angular orientation of GLCM is formed based on four angular directions, namely, 0°, 45°, 90°, and 135°, and distance between pixel uses 1, 2, 3, and 4. The highest accuracy is on 9 hidden neurons, 4 input layers, and 2 output layers with an accuracy of 0.824.
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