Enhancing eye disease classification through synergistic deep learning approaches
Abstract
The number of people living with blindness is about 43 million people and 295
million people are living with moderate-to-severe visual impairment. The leading
causes of most blindness are macular degeneration, diabetic retinopathy, and glaucoma.
Moreover, the early stages of most eye diseases are asymptomatic. As a
result, determining the cause becomes very difficult, and if left untreated, there
can be irreversible damage to vision. This paper discusses a hybrid structure that
combined ResNet50 and VGG19 to successfully classify and predict various eye diseases
accurately. In addition, we used transfer learning and multi-class classification,
which gave us an accuracy of 94.7%, whereas previous approaches with traditional
CNN only gave an accuracy of less than 85%. This study has the potential to significantly
contribute to the timely identification and precise categorization of ocular
disorders, hence leading to advancements in patient treatment, increased overall
well-being, and a more promising outlook for individuals affected by visual disabilities.
Moreover, it indicates the possibility of wider utilization of sophisticated deep
learning methods in the field of medical image analysis.