shubhankar-shandilya-india/Accident-Detection-Model
Accident Detection Model using Deep Learning, OpenCV, Machine Learning, Artificial Intelligence.
Leverages YOLOv8 trained on 3200+ Roboflow-annotated images to detect accidents in real-time across live camera feeds, images, and videos with binary classification (accident/no-accident). Trained on Google Colab's GPU infrastructure with 25 epochs at 640px resolution, the model outputs bounding box predictions stored in YOLO format. Designed for highway deployment via IoT-integrated cameras or Flask web application integration for accessibility.
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Feb 08, 2025
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