pratheeshkumar99/Real-Time-Vehicle-Detection-and-Traffic-Flow-Classification-System-
This project uses YOLOv8 for real-time vehicle detection, classifying traffic on custom datasets. It processes image and video inputs, providing metrics like vehicle counts and traffic density. The model, exportable in PyTorch and ONNX formats, supports deployment across various platforms for traffic management and smart city applications.
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Nov 22, 2024
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