Abstract:
Eye disorders pose a significant global health challenge, often causing permanent vision loss if not detected and treated promptly. Recent advancements in medical image analysis, particularly through deep learning techniques like Convolutional Neural Networks (CNNs), show promise in early and accurate detection of ocular diseases. This paper reviews pioneering developments in using deep learning for recognizing ocular diseases, focusing on exploring the potential of CNNs in ocular disease diagnosis. It emphasizes the creation and thorough evaluation of deep learning models trained on diverse datasets to proficiently identify various ocular pathologies, such as diabetic retinopathy, glaucoma, and cataracts. Through meticulous architectural design, training methods, and optimization strategies, these models achieve impressive accuracy rates, highlighting the transformative potential of deep learning in ophthalmology. Beyond technical aspects, the research acknowledges the broader benefits of early disease detection, including preventing vision loss and improving quality of life. It also discusses ethical considerations and practical implementation challenges in healthcare settings. the study underscores the game-changing impact of deep learning in ocular disease recognition, offering a promising future for enhancing eye healthcare globally.