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Detection of Retinal Lesions Based on Deep Learning for Diabetic Retinopathy

机译:基于深度学习的糖尿病视网膜病变的视网膜病变检测

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Diabetic retinopathy (DR), is a physical condition that appear due to damages in the vessels of retina. It can occur if person have type one or type two diabetics. Also it occur due to high sugar levels in blood. At starting there is only mild vision problems eventually lose sight. It is an ordinary eye disease found in people with diabetes. This paper automatically and efficiently detect and classify the severity of DR. The first stepis Pre-processing, here perform Green channel extraction, Blood vessel extraction and Optic Disc (OD)removal. Green channel extraction is done to enhance the contrast. Kernel fuzzy c-means is usedto extract blood vessels and OD is removed by morphological operation. The next step isRecognition of Diabetic features, in this first is to recognize Hard Exudates, which is based on recursive region growing segmentation (RRGS) algorithm. The second one is recognition of Hemorrhages (HEM) and Micro aneurysms (MA) by using Matched Filtering, Laplacian of Gaussian Filtering, and Mutual Information Maximization using DE. From these extract features such as the microneurysms (MAs) counts, perimeter, area and exudate count, the area and perimeter of blood vessels. Then the extracted features are fed to CNN for classification purpose. This method reducing the workload of an ophthalmologist with an accuracy of around 98%.
机译:糖尿病性视网膜病(DR)是一种由于视网膜血管受损而出现的身体状况。如果某人患有一型或二型糖尿病,则可能发生这种情况。它也由于血液中高糖水平而发生。开始时只有轻度的视力问题,最终会失去视力。这是在糖尿病患者中发现的普通眼病。本文自动有效地检测和分类DR的严重性。第一步是预处理,在此执行绿色通道提取,血管提取和光盘(OD)去除。进行绿色通道提取以增强对比度。核模糊c均值用于提取血管,并通过形态学操作去除OD。下一步是识别糖尿病特征,这首先是基于递归区域生长分割(RRGS)算法识别硬渗出液。第二个是通过使用匹配过滤,高斯过滤的拉普拉斯算子和使用DE的互信息最大化来识别出血(HEM)和微动脉瘤(MA)。从这些提取物的特征,例如微神经瘤(MA)计数,周长,面积和渗出液计数,血管的面积和周长。然后将提取的特征馈入CNN以进行分类。这种方法减少了眼科医生的工作量,准确度约为98%。

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