ArXiv TLDR

Learn Weightlessness: Imitate Non-Self-Stabilizing Motions on Humanoid Robot

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2604.21351

Yucheng Xin, Jiacheng Bao, Haoran Yang, Wenqiang Que, Dong Wang + 4 more

cs.RO

TLDR

This paper introduces a Weightlessness Mechanism for humanoid robots to imitate non-self-stabilizing motions by adaptively relaxing joints for environmental interaction.

Key contributions

  • Proposes "Weightlessness Mechanism" (WM) for humanoids to imitate non-self-stabilizing (NSS) motions.
  • WM dynamically relaxes specific joints, enabling adaptive physical interaction with the environment.
  • Uses an auto-labeling strategy to identify "weightless" states from human demonstrations.
  • Achieves strong generalization on tasks like sitting, lying, and leaning on a Unitree G1 robot.

Why it matters

This work bridges the gap between rigid trajectory tracking and adaptive environmental interaction in humanoid control. By mimicking human "weightlessness," it offers a biologically-inspired solution for robust, contact-rich behaviors, enhancing robot versatility.

Original Abstract

The integration of imitation and reinforcement learning has enabled remarkable advances in humanoid whole-body control, facilitating diverse human-like behaviors. However, research on environment-dependent motions remains limited. Existing methods typically enforce rigid trajectory tracking while neglecting physical interactions with the environment. We observe that humans naturally exploit a "weightless" state during non-self-stabilizing (NSS) motions--selectively relaxing specific joints to allow passive body--environment contact, thereby stabilizing the body and completing the motion. Inspired by this biological mechanism, we design a weightlessness-state auto-labeling strategy for dataset annotation; and we propose the Weightlessness Mechanism (WM), a method that dynamically determines which joints to relax and to what level, together enabling effective environmental interaction while executing target motions. We evaluate our approach on 3 representative NSS tasks: sitting on chairs of varying heights, lying down on beds with different inclinations, and leaning against walls via shoulder or elbow. Extensive experiments in simulation and on the Unitree G1 robot demonstrate that our WM method, trained on single-action demonstrations without any task-specific tuning, achieves strong generalization across diverse environmental configurations while maintaining motion stability. Our work bridges the gap between precise trajectory tracking and adaptive environmental interaction, offering a biologically-inspired solution for contact-rich humanoid control.

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