An AI-powered tool leveraging ResNet-50 and Xception pretrained models to detect diabetic retinopathy with 97.5% accuracy. Upload a retinal image to instantly classify severity levels, aiding in early diagnosis and vision loss prevention.
Diabetic Retinopathy Detector: AI-Powered Eye Care
Introducing the Diabetic Retinopathy Detector, an innovative AI-powered tool designed to assist in the early detection and diagnosis of diabetic retinopathy—a leading cause of blindness worldwide.
Built using ResNet-50 and Xception pretrained models, the detector leverages advanced deep learning techniques to achieve an impressive 97.5% accuracy. This ensures precise and reliable predictions, enabling healthcare professionals and researchers to make informed decisions.
Key Features:
High Accuracy: Powered by state-of-the-art pretrained models, fine-tuned for optimal performance.
Simple Workflow: Upload a retinal image, and the model predicts the severity of diabetic retinopathy in seconds.
Comprehensive Classification: Detects five stages of diabetic retinopathy—ranging from no DR to proliferative DR.
Fast & Efficient: Optimized for speed and usability without compromising on accuracy.
How It Works:
Upload a retinal image.
The detector analyzes the image and identifies the severity level.
Receive results with a detailed confidence score.
Why It Matters:
Diabetic retinopathy, if detected early, can be effectively managed to prevent vision loss. This tool brings cutting-edge AI technology to the forefront of eye care, democratizing access to early detection solutions.