RidwanHaque/AI-ML-CV-NBA-Basketball-Analytics-System-Interface
A computer vision pipeline built with PyTorch for advanced NBA analytics. The system uses YOLO for player/ball detection, multi-object tracking, and a zero-shot classifier for team affiliation, and court key point detection to create a tactical top-down view and calculate real-world metrics like speed, distance, and passes.
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Last pushed
Nov 02, 2025
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