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From Experts to a Generalist: Toward General Whole-Body Control for Humanoid Robots

15 June 2025
Yuxuan Wang
Ming Yang
Weishuai Zeng
Yu Zhang
Xinrun Xu
Haobin Jiang
Ziluo Ding
Zongqing Lu
ArXiv (abs)PDFHTML
Main:9 Pages
6 Figures
Bibliography:3 Pages
11 Tables
Appendix:4 Pages
Abstract

Achieving general agile whole-body control on humanoid robots remains a major challenge due to diverse motion demands and data conflicts. While existing frameworks excel in training single motion-specific policies, they struggle to generalize across highly varied behaviors due to conflicting control requirements and mismatched data distributions. In this work, we propose BumbleBee (BB), an expert-generalist learning framework that combines motion clustering and sim-to-real adaptation to overcome these challenges. BB first leverages an autoencoder-based clustering method to group behaviorally similar motions using motion features and motion descriptions. Expert policies are then trained within each cluster and refined with real-world data through iterative delta action modeling to bridge the sim-to-real gap. Finally, these experts are distilled into a unified generalist controller that preserves agility and robustness across all motion types. Experiments on two simulations and a real humanoid robot demonstrate that BB achieves state-of-the-art general whole-body control, setting a new benchmark for agile, robust, and generalizable humanoid performance in the real world.

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@article{wang2025_2506.12779,
  title={ From Experts to a Generalist: Toward General Whole-Body Control for Humanoid Robots },
  author={ Yuxuan Wang and Ming Yang and Weishuai Zeng and Yu Zhang and Xinrun Xu and Haobin Jiang and Ziluo Ding and Zongqing Lu },
  journal={arXiv preprint arXiv:2506.12779},
  year={ 2025 }
}
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