A Computer Vision based Traffic Signal Violation Detection System from video footage using YOLOv3 & Tkinter. (GUI Included)
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fabianmuscat / repository
A computer vision-based driver assistance system that detects vehicles and pedestrians from a windshield-mounted camera. It identifies close obstacles and potential collisions in real time, generating alerts such as “Obstacle Close” and “Brake!”. Built using Python, YOLOv8, and OpenCV.
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A Computer Vision based Traffic Signal Violation Detection System from video footage using YOLOv3 & Tkinter. (GUI Included)
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