petermartens98/Finetuned-YOLO-and-Supervision-Basketball-Video-Tracker
Track players and ball in NBA broadcast videos using fine-tuned YOLOv5, Supervision's ByteTrack, and K-Means clustering with color transformers. Built with Python, OpenCV, and scikit-learn. Automatically detects players, tracks basketball, assigns teams, and identifies possession.
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Nov 30, 2025
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