ArXiv TLDR

Switch: Learning Agile Skills Switching for Humanoid Robots

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2604.14834

Yuen-Fui Lau, Qihan Zhao, Yinhuai Wang, Runyi Yu, Hok Wai Tsui + 2 more

cs.RO

TLDR

Switch is a hierarchical multi-skill system enabling humanoid robots to seamlessly transition between diverse locomotion skills using a skill graph and online scheduler.

Key contributions

  • Introduces a Skill Graph (SG) to define kinematically similar cross-skill transitions from motion data.
  • Trains a whole-body tracking policy using deep reinforcement learning on the established Skill Graph.
  • Deploys an online skill scheduler for robust execution and smooth transitions via real-time graph search.

Why it matters

Existing methods struggle with flexible skill transitions, limiting humanoid robot capabilities and raising safety concerns. Switch addresses this by enabling seamless, agile skill switching, making humanoid locomotion more robust and practical.

Original Abstract

Recent advancements in whole-body control through deep reinforcement learning have enabled humanoid robots to achieve remarkable progress in real-world chal lenging locomotion skills. However, existing approaches often struggle with flexible transitions between distinct skills, cre ating safety concerns and practical limitations. To address this challenge, we introduce a hierarchical multi-skill system, Switch, enabling seamless skill transitions at any moment. Our approach comprises three key components: (1) a Skill Graph (SG) that establishes potential cross-skill transitions based on kinematic similarity within multi-skill motion data, (2) a whole-body tracking policy trained on this skill graph through deep reinforcement learning, and (3) an online skill scheduler to drive the tracking policy for robust skill execution and smooth transitions. For skill switching or significant tracking deviations, the scheduler performs online graph search to find the optimal feasible path, which ensures efficient, stable, and real-time execution of diverse locomotion skills. Comprehensive experiments demonstrate that Switch empowers humanoid to execute agile skill transitions with high success rates while maintaining strong motion imitation performance.

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