Learning coordinated badminton skills for legged manipulators
- URL: http://arxiv.org/abs/2505.22974v2
- Date: Tue, 23 Sep 2025 12:45:55 GMT
- Title: Learning coordinated badminton skills for legged manipulators
- Authors: Yuntao Ma, Andrei Cramariuc, Farbod Farshidian, Marco Hutter,
- Abstract summary: We introduce an approach for enabling legged mobile manipulators to play badminton.<n>We propose a unified reinforcement learning-based control policy for whole-body visuomotor skills.<n>Our method includes a shuttlecock prediction model, constrained reinforcement learning for robust motion control, and integrated system identification techniques.
- Score: 12.514822343998908
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Coordinating the motion between lower and upper limbs and aligning limb control with perception are substantial challenges in robotics, particularly in dynamic environments. To this end, we introduce an approach for enabling legged mobile manipulators to play badminton, a task that requires precise coordination of perception, locomotion, and arm swinging. We propose a unified reinforcement learning-based control policy for whole-body visuomotor skills involving all degrees of freedom to achieve effective shuttlecock tracking and striking. This policy is informed by a perception noise model that utilizes real-world camera data, allowing for consistent perception error levels between simulation and deployment and encouraging learned active perception behaviors. Our method includes a shuttlecock prediction model, constrained reinforcement learning for robust motion control, and integrated system identification techniques to enhance deployment readiness. Extensive experimental results in a variety of environments validate the robot's capability to predict shuttlecock trajectories, navigate the service area effectively, and execute precise strikes against human players, demonstrating the feasibility of using legged mobile manipulators in complex and dynamic sports scenarios.
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