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Cataract Detection and Grading with Retinal Images Using SOM-RBF Neural Network

机译:使用SOM-RBF神经网络的白内障检测和视网膜图像分级

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A cataract is the prevailing cause of visual impairment in the modern world. The detection of cataract at early stages can lessen the risk of blindness. This study presents an automated system for cataract detection and grading based on retinal images. The system is comprised of image acquisition, preprocessing, feature extraction, classifier building, and cataract detection and grading. The preprocessing steps such as green channel extraction, histogram equalization, and top-bottom hat transformation are used to improve the quality of retinal images. The wavelet and texture features are extracted from the fundus image for building a classifier. A combination of SOM (Self-Organizing Maps) and RBF (Radial Basis Function) neural network has been taken to obtain better prediction accuracy of cataract. SOM-RBF neural network is evaluated on Tongren dataset with 8030 subjects categorized into four classes: Normal, Mild, Mature, and Severe. The proposed method achieved 95.3% and 91.7% of accuracy for cataract detection and grading tasks, respectively. The experimental results indicate that the proposed method performs better than the traditional RBF and other baseline methods.
机译:白内障是现代世界中视力障碍的主要原因。早期发现白内障可以减少失明的风险。这项研究提出了一种基于视网膜图像的白内障自动检测和分级系统。该系统包括图像采集,预处理,特征提取,分类器构建以及白内障检测和分级。诸如绿色通道提取,直方图均衡和顶底帽子变换之类的预处理步骤可用于提高视网膜图像的质量。从眼底图像中提取小波和纹理特征以建立分类器。已经采用SOM(自组织图)和RBF(径向基函数)神经网络的组合以获得更好的白内障预测准确性。在同仁数据集上对SOM-RBF神经网络进行了评估,将8030名受试者分为四类:正常,轻度,成熟和严重。所提出的方法分别为白内障检测和分级任务实现了95.3%和91.7%的准确率。实验结果表明,所提出的方法比传统的RBF方法和其他基线方法具有更好的性能。

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