SkalskiP/sport

Examples of Computer Vision usage in sports ⚽🏃

Jupyter Notebooktutorialdeep-neural-networkscomputer-visiondeep-learningpytorchobject-detectionsports-analyticsyolov5yolov7
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⚽ Football Players Tracking with YOLOv5 + ByteTrack I have long been fascinated by the use of Computer Vision in sports. After all, it is a combination of two things I love. Almost three years ago, I wrote a post on my personal blog in which I tried — at that time, still using YOLOv3 — to detect and classify basketball players on the court. FIFA World Cup 2022 has motivated me to revisit this idea. This time I used a combination of YOLOv5 and ByteTrack to track football players on the field. This...
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