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Learning athletic humanoid tennis skills from imperfect human motion data

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Why This Matters

This research advances humanoid robotics by enabling robots to learn and perform complex tennis skills using imperfect human motion data. It demonstrates that even incomplete and fragmentary data can effectively teach robots to mimic natural athletic movements, paving the way for more realistic and versatile robot-human interactions. This development has significant implications for sports robotics, training, and entertainment industries, enhancing robot adaptability and performance in dynamic environments.

Key Takeaways

Human athletes demonstrate versatile and highly-dynamic tennis skills to successfully conduct competitive rallies with a high-speed tennis ball. However, reproducing such behaviors on humanoid robots is difficult, partially due to the lack of perfect humanoid action data or human kinematic motion data in tennis scenarios as reference. In this work, we propose LATENT, a system that Learns Athletic humanoid TEnnis skills from imperfect human motioN daTa. The imperfect human motion data consist only of motion fragments that capture the primitive skills used when playing tennis rather than precise and complete human-tennis motion sequences from real-world tennis matches, thereby significantly reducing the difficulty of data collection. Our key insight is that, despite being imperfect, such quasi-realistic data still provide priors about human primitive skills in tennis scenarios. With further correction and composition, we learn a humanoid policy that can consistently strike incoming balls under a wide range of conditions and return them to target locations, while preserving natural motion styles. We also propose a series of designs for robust sim-to-real transfer and deploy our policy on the Unitree G1 humanoid robot. Our method achieves surprising results in the real world and can stably sustain multi-shot rallies with human players.