CVAIApr 29, 2023

Improving Classification of Retinal Fundus Image Using Flow Dynamics Optimized Deep Learning Methods

arXiv:2305.00294v13 citationsh-index: 3
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of time-consuming manual diagnosis for diabetic patients, though it appears incremental as it builds on existing CNN and optimization techniques.

The researchers tackled automated detection of Diabetic Retinopathy from retinal fundus images by proposing a CNN-based model combined with the River Formation Dynamics algorithm, achieving performance superior to alternative methods as evaluated on a KAGGLE dataset.

Diabetic Retinopathy (DR) refers to a barrier that takes place in diabetes mellitus damaging the blood vessel network present in the retina. This may endanger the subjects' vision if they have diabetes. It can take some time to perform a DR diagnosis using color fundus pictures because experienced clinicians are required to identify the tumors in the imagery used to identify the illness. Automated detection of the DR can be an extremely challenging task. Convolutional Neural Networks (CNN) are also highly effective at classifying images when applied in the present situation, particularly compared to the handmade and functionality methods employed. In order to guarantee high results, the researchers also suggested a cutting-edge CNN model that might determine the characteristics of the fundus images. The features of the CNN output were employed in various classifiers of machine learning for the proposed system. This model was later evaluated using different forms of deep learning methods and Visual Geometry Group (VGG) networks). It was done by employing the images from a generic KAGGLE dataset. Here, the River Formation Dynamics (RFD) algorithm proposed along with the FUNDNET to detect retinal fundus images has been employed. The investigation's findings demonstrated that the approach performed better than alternative approaches.

Foundations

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