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Performance Evaluation of Binary Classification of Diabetic Retinopathy through Deep Learning Techniques using Texture Feature

机译:利用纹理特征对深层学习技术进行糖尿病视网膜病变的二元分类性能评价

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One of the main causes of loss of vision in diabetic patients is Diabetic retinopathy (DR). Automated methods are important medical applications for detecting and classifying the disease type into normal or abnormal ones. Fundus images are obtained from the retina using a retinal camera, one of a non-invasive diagnostic technique that offers a way of examining the retina in diabetes patients. We present in this paper a system for the detection and classification of DRs. Our approach is divided into two main steps: in the first step, we use local binary patterns (LBP) to extract texture features, while in the second stage, we analyze extensively the state-of-the-art deep learning techniques for the detection and classification tasks. ResNet, DenseNet, and DetNet are used as deep learning techniques. Preliminary results show that ResNet, DenseNet and DetNet can obtain 0,9635%, 0,8405% and 0,9399% of accuracy, respectively. In addition, we also evaluate the performance of each detection configuration.
机译:糖尿病患者丧失视力丧失的主要原因之一是糖尿病视网膜病变(DR)。自动化方法是用于检测和分类疾病类型成正常或异常的重要医疗应用。使用视网膜使用视网膜摄像头来获得眼底图像,一种非侵入性诊断技术之一,提供一种检查糖尿病患者视网膜的方法。我们在本文中展示了一种用于检测和分类DRS的系统。我们的方法分为两个主要步骤:在第一步中,我们使用本地二进制模式(LBP)提取纹理特征,而在第二阶段,我们分析了最先进的深度学习技术进行检测和分类任务。 Reset,DenSenet和Divnet用作深度学习技术。初步结果表明,Reset,DenSenet和Dirnet分别可以分别获得0,9635%,0,8405%和0,9399%的准确性。此外,我们还评估每个检测配置的性能。

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