Blue-Davinci/FooVision
This project aims to identify and monitor players, referees, and footballs in video footage using YOLO, a top-tier AI object detection model. The model should be trained further to enhance its efficiency. Moreover, categorization of players into teams based on their jersey colors, using Kmeans for pixel segmentation and clustering can be added.
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Last pushed
May 18, 2024
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