Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Artifical intelligence with optimal deep learning enabled automated retinal fundus image classification model

View through CrossRef
AbstractDiabetic retinopathy (DR) and age related macular degeneration (AMD) becomes widespread microvascular illness among diabetic patients. Traditional retinal fundus image classification requires visual inspection by the professionals, which is time consuming and requires expert's knowledge. Earlier identification of retinal diseases is essential to delay or avoid vision deterioration and vision loss. The recently developed artificial intelligence (AI) and deep learning (DL) models can be employed for accurate retinal image classification. With this motivation, this study designs a new artificial intelligence with optimal deep convolutional neural network (AI‐ODCNN) technique for retinal fundus image classification. Primarily, the proposed model uses the Gaussian Blur based noise removal and contrast enhancement technique (CLAHE) based contrast enhancement technique to pre‐process the retinal fundus image. In addition, morphology and contour based image segmentation is performed. Moreover, the deep CNN with RMSProp Optimizer is employed for retinal fundus image classification. A wide range of simulations was performed on the automated retinal image analysis and structured analysis of the retina and the outcomes are examined with respect to various measures. The simulation outcomes ensured the better performance of the proposed approach related to other recent algorithms with maximum accuracy of 96.47%.
Title: Artifical intelligence with optimal deep learning enabled automated retinal fundus image classification model
Description:
AbstractDiabetic retinopathy (DR) and age related macular degeneration (AMD) becomes widespread microvascular illness among diabetic patients.
Traditional retinal fundus image classification requires visual inspection by the professionals, which is time consuming and requires expert's knowledge.
Earlier identification of retinal diseases is essential to delay or avoid vision deterioration and vision loss.
The recently developed artificial intelligence (AI) and deep learning (DL) models can be employed for accurate retinal image classification.
With this motivation, this study designs a new artificial intelligence with optimal deep convolutional neural network (AI‐ODCNN) technique for retinal fundus image classification.
Primarily, the proposed model uses the Gaussian Blur based noise removal and contrast enhancement technique (CLAHE) based contrast enhancement technique to pre‐process the retinal fundus image.
In addition, morphology and contour based image segmentation is performed.
Moreover, the deep CNN with RMSProp Optimizer is employed for retinal fundus image classification.
A wide range of simulations was performed on the automated retinal image analysis and structured analysis of the retina and the outcomes are examined with respect to various measures.
The simulation outcomes ensured the better performance of the proposed approach related to other recent algorithms with maximum accuracy of 96.
47%.

Related Results

Fundus Bleeding
Fundus Bleeding
Abstract Fundus bleeding, commonly known as retinal haemorrhage, is a significant ocular manifestation associated with various systemic and ocular conditions. This abstra...
Retinal Fundus image processing and ensemble learning: optic disc and optic cup detection
Retinal Fundus image processing and ensemble learning: optic disc and optic cup detection
Ophthalmologists have widely used retinal fundus imaging systems to examine the health of the optic nerve, vitreous, macula, retina and their blood vessels. Many critical diseases,...
Retinal Fundus image processing and ensemble learning: optic disc and optic cup detection
Retinal Fundus image processing and ensemble learning: optic disc and optic cup detection
Ophthalmologists have widely used retinal fundus imaging systems to examine the health of the optic nerve, vitreous, macula, retina and their blood vessels. Many critical diseases,...
e0392 Relationship between retinal vasculopathy and coronary artery disease
e0392 Relationship between retinal vasculopathy and coronary artery disease
Background and objective Studies showed that atherosclerosis is a systemic disease. Parameters representing peripheral artery atherosclerosis, such as decreased a...
Retinal Fundus Image Blood Vessels Segmentation via Object-Oriented Metadata Structures
Retinal Fundus Image Blood Vessels Segmentation via Object-Oriented Metadata Structures
Retinal fundus image is a crucial tool for ophthalmologists to diagnose eye-related diseases. These images provide visual information of the interior layer of the retina structures...
Improved retinal vessel segmentation using the enhanced pre-processing method for high resolution fundus images
Improved retinal vessel segmentation using the enhanced pre-processing method for high resolution fundus images
Background: By diagnosing using fundus images, ophthalmologists can possibly detect symptoms of retinal diseases such as diabetic retinopathy, age-related macular degeneration, and...
Deep convolutional neural network and IoT technology for healthcare
Deep convolutional neural network and IoT technology for healthcare
Background Deep Learning is an AI technology that trains computers to analyze data in an approach similar to the human brain. Deep learning algorithms can find complex patterns in ...
Enhancing Non-Formal Learning Certificate Classification with Text Augmentation: A Comparison of Character, Token, and Semantic Approaches
Enhancing Non-Formal Learning Certificate Classification with Text Augmentation: A Comparison of Character, Token, and Semantic Approaches
Aim/Purpose: The purpose of this paper is to address the gap in the recognition of prior learning (RPL) by automating the classification of non-formal learning certificates using d...

Back to Top