Early Deep Detection for Diabetic Retinopathy
Date
2020-11
Authors
Journal Title
Journal ISSN
Volume Title
Type
Article
Publisher
Publisher Institute of Electrical and Electronics Engineers Inc.
Series Info
2020 International Symposium on Advanced Electrical and Communication Technologies, ISAECT 202025 November 2020 2020 International Symposium on Advanced Electrical and Communication Technologies;ISAECT 2020, Marrakech, 25 November 2020 - 27 November 2020, 171534
Scientific Journal Rankings
Abstract
Diabetic retinopathy (DR) is a diabetic condition that affects the eyes and it could lead to blurry vision or complete vision loss. Convolutional neural networks (CNNs) have been used increasingly for computer vision projects and medical image analysis. Past work has been done using deep learning models and frameworks to automatically detect diabetic retinopathy. However, such techniques used very large CNNs requiring enormous computing resources. Therefore, it is necessary to develop more computationally efficient deep learning frameworks for automated DR diagnosis. The main objective of this project is to build a reliable and computationally efficient deep learning model for the automated DR diagnosis. In this paper, a computationally efficient deep learning CNN is presented based on the DenseNet-121 neural network architecture that provides very deep CNN with lower computational resources using the concept of transfer learning. The model also detects the severity of the disease. The proposed deep learning model is trained and tested using the commonly used labeled retinal images data set and the cloud GPU provided by the community of data scientists and machine learners, Kaggle. © 2020 IEEE.
Description
Scopus
Keywords
Deep Learning, DenseNet, Diabetic Retinopathy Detection, Neural Networks