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.
This tool analyzes professional badminton match videos to predict where the player on the near side of the court is most likely to hit their next shot. It takes a match video as input and outputs the probable shot placement on the court, considering player positions and body poses. This is ideal for aspiring badminton players looking to improve their game strategy by understanding professional shot selections, or for enhancing the viewing experience for badminton fans.
No commits in the last 6 months.
Use this if you are a badminton player or coach wanting to analyze professional match videos to understand shot placement strategy and improve your own game.
Not ideal if you need real-time analysis during a live match or a comprehensive tactical breakdown of both players' strategies.
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Language
Jupyter Notebook
License
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Category
Last pushed
Jun 30, 2023
Commits (30d)
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