A Reinforcement Learning Badminton Environment for Simulating Player
Tactics (Student Abstract)
- URL: http://arxiv.org/abs/2211.12234v1
- Date: Tue, 22 Nov 2022 12:38:12 GMT
- Title: A Reinforcement Learning Badminton Environment for Simulating Player
Tactics (Student Abstract)
- Authors: Li-Chun Huang, Nai-Zen Hseuh, Yen-Che Chien, Wei-Yao Wang, Kuang-Da
Wang, Wen-Chih Peng
- Abstract summary: We focus on turn-based sports and introduce a badminton environment by simulating rallies with different angles of view.
This benefits not only coaches and players by simulating past matches for tactic investigation, but also researchers from rapidly evaluating their novel algorithms.
- Score: 4.7376902105662255
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recent techniques for analyzing sports precisely has stimulated various
approaches to improve player performance and fan engagement. However, existing
approaches are only able to evaluate offline performance since testing in
real-time matches requires exhaustive costs and cannot be replicated. To test
in a safe and reproducible simulator, we focus on turn-based sports and
introduce a badminton environment by simulating rallies with different angles
of view and designing the states, actions, and training procedures. This
benefits not only coaches and players by simulating past matches for tactic
investigation, but also researchers from rapidly evaluating their novel
algorithms.
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