Optimised deep learning model for the diagnosis of diabetic retinopathy

Authors

  • Venubabu Rachapudi Author

Abstract

In the medical image analysis, the diagnosis of diabetic retinopathy (DR) from fundus images are identified as an open challenge and requires possible solutions. The major stages of the proposed DR are Pre-processing, Segmentation, Feature Extraction, and Classification. In Pre-processing, the retinal fundus images are RGB images, among them the G-channel is selected. Following that, histogram equalization and contrast limited adaptive histogram equalization (HE and CLAHE) are applied. Then the next stage is removing the optic disc (OD) and it is done by Circle Hough Transform (CHT). Then, the Gray Level thresholding is used for removing the blood vessels. Then the Exudates are segmented by the Modified Expectation Maximization (MEM) algorithm. Then Gray Level Co-occurrence Matrix (GLCM) is used for feature extraction. At last, features are classified by the Deep Neural Network with a Butterfly Optimization Algorithm (DNN- BOA) classifier which is used for classifying the several stages of DR. The proposed scheme is implemented on MATLAB 2021a.

Published

2021-01-01

Issue

Section

Articles

How to Cite

Optimised deep learning model for the diagnosis of diabetic retinopathy. (2021). International Journal of Food and Nutritional Sciences, 10(3), 340-344. https://ijfans.org/index.php/Journal/article/view/3357