kausik-24/Automated-Brain-Tumor-Detection-Using-YOLOv10-A-Deep-Learning-Approach
This project implements an automated brain tumor detection system using the YOLOv10 deep learning model. It utilizes a robust MRI dataset for training, enabling accurate tumor identification and annotation. An interactive Gradio interface allows users to upload images for real-time predictions, enhancing diagnostic efficiency in medical imaging.
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Sep 22, 2024
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