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HWC-Loco: A Hierarchical Whole-Body Control Approach to Robust Humanoid Locomotion

Main:9 Pages
15 Figures
Bibliography:5 Pages
18 Tables
Appendix:10 Pages
Abstract

Humanoid robots, capable of assuming human roles in various workplaces, have become essential to the advancement of embodied intelligence. However, as robots with complex physical structures, learning a control model that can operate robustly across diverse environments remains inherently challenging, particularly under the discrepancies between training and deployment environments. In this study, we propose HWC-Loco, a robust whole-body control algorithm tailored for humanoid locomotion tasks. By reformulating policy learning as a robust optimization problem, HWC-Loco explicitly learns to recover from safety-critical scenarios. While prioritizing safety guarantees, overly conservative behavior can compromise the robot's ability to complete the given tasks. To tackle this challenge, HWC-Loco leverages a hierarchical policy for robust control. This policy can dynamically resolve the trade-off between goal-tracking and safety recovery, guided by human behavior norms and dynamic constraints. To evaluate the performance of HWC-Loco, we conduct extensive comparisons against state-of-the-art humanoid control models, demonstrating HWC-Loco's superior performance across diverse terrains, robot structures, and locomotion tasks under both simulated and real-world environments.

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@article{lin2025_2503.00923,
  title={ HWC-Loco: A Hierarchical Whole-Body Control Approach to Robust Humanoid Locomotion },
  author={ Sixu Lin and Guanren Qiao and Yunxin Tai and Ang Li and Kui Jia and Guiliang Liu },
  journal={arXiv preprint arXiv:2503.00923},
  year={ 2025 }
}
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