RetinalNet-500: a newly developed CNN model for eye disease detection
Abstract
Fundus images are commonly used by medical experts like ophthalmologists, which
are very helpful in detecting various retinal disorders. They used this to diagnose
the different types of eye diseases like Cataracts, Diabetic Retinopathy, Glaucoma
etc. These fundus images can be also used for the prediction of the severity of
the diseases and can provide early signs or warnings. Recently, different machine
learning algorithms are playing a vital role in the field of medical science, and it is no
different in Ophthalmology either. In this research, we aim to automatically classify
healthy and diseased retinal fundus images using deep neural networks. Because
deep learning is an excellent machine learning algorithm, which has proven to be
very accurate in computer vision problems. In our research, we used convolutional
neural networks(CNN) to classify the retinal images whether they are healthy or
not.