Image Processing, Textural Feature Extraction and Transfer Learning based detection of Diabetic Retinopathy

Anjana Umapathy, A. Sreenivasan, D. S. Nairy, S. Natarajan, B. Rao
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引用次数: 9

Abstract

Diabetic Retinopathy (DR) is one of the most common causes of blindness in adults. The need for automating the detection of DR arises from the deficiency of ophthalmologists in certain regions where screening is done, and this paper is aimed at mitigating this bottleneck. Images from publicly available datasets STARE, HRF, and MESSIDOR along with a novel dataset of images obtained from the Retina Institute of Karnataka are used for training the models. This paper proposes two methods to automate the detection. The first approach involves extracting features using retinal image processing and textural feature extraction, and uses a Decision Tree classifier to predict the presence of DR. The second approach applies transfer learning to detect DR in fundus images. The accuracies obtained by the two approaches are 94.4% and 88.8% respectively, which are competent to current automation methods. A comparison between these models is made. On consultation with Retina Institute of Karnataka, a web application which predicts the presence of DR that can be integrated into screening centres is made.
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基于图像处理、纹理特征提取和迁移学习的糖尿病视网膜病变检测
糖尿病视网膜病变(DR)是成年人失明的最常见原因之一。自动化检测DR的需求源于某些地区眼科医生的缺乏,而本文旨在缓解这一瓶颈。来自公开数据集STARE、HRF和MESSIDOR的图像以及来自卡纳塔克邦视网膜研究所的新图像数据集用于训练模型。本文提出了两种自动化检测方法。第一种方法涉及使用视网膜图像处理和纹理特征提取提取特征,并使用决策树分类器预测DR的存在;第二种方法应用迁移学习来检测眼底图像中的DR。两种方法的精度分别为94.4%和88.8%,可以满足现有自动化方法的要求。对这些模型进行了比较。在与卡纳塔克邦视网膜研究所协商后,一个可以预测DR存在的网络应用程序可以整合到筛查中心。
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