lgupta-mle/qualitative-badminton-player-analysis
In this group project carried out with @Anannyap7, the aim is to take a professional badminton match video as an input and predict the most probable space on the court where the shot will be hit by the player on the near side of the court.
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Jun 30, 2023
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