Design an Early Detection and Classification for Diabetic Retinopathy by Deep Feature Extraction based Convolution Neural Network
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Keywords

Diabetic retinopathy
Convolutional Neural Network

How to Cite

Sungheetha, Akey, and Rajesh Sharma R. 2021. “Design an Early Detection and Classification for Diabetic Retinopathy by Deep Feature Extraction Based Convolution Neural Network”. Journal of Trends in Computer Science and Smart Technology 3 (2): 81-94. https://doi.org/10.36548/jtcsst.2021.2.002.

Abstract

Early identification of diabetics using retinopathy images is still a difficult challenge. Many illness diagnosis techniques are accomplished by using the blood vessels present in fundus images. Many conventional methods fail to detect Hard Executes (HE) present in retinopathy images, which are used to determine the severity of diabetes disease. To overcome this challenge, the proposed research work extracts the features by incorporating deep networks through convolution neural networks (CNN). The micro aneurysm may be seen in the early stages of the transformation from normal to sick condition on the images for mild DR. The level of severity of the diabetes condition may be classified by using the confusion matrix detection results. The early detection of the diabetic condition has been achieved through the HE spotted in the blood vessel of an eye by using the proposed CNN framework. The proposed framework is also used to detect a person’s diabetic condition. This article consisting of proof for the accuracy of the proposed framework is higher than other traditional detection algorithms.

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