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HoRD: Robust Humanoid Control via History-Conditioned Reinforcement Learning and Online Distillation

Puyue Wang
Jiawei Hu
Yan Gao
Junyan Wang
Yu Zhang
Gillian Dobbie
Tao Gu
Wafa Johal
Ting Dang
Hong Jia
Main:8 Pages
11 Figures
Bibliography:2 Pages
8 Tables
Appendix:7 Pages
Abstract

Humanoid robots can suffer significant performance drops under small changes in dynamics, task specifications, or environment setup. We propose HoRD, a two-stage learning framework for robust humanoid control under domain shift. First, we train a high-performance teacher policy via history-conditioned reinforcement learning, where the policy infers latent dynamics context from recent state--action trajectories to adapt online to diverse randomized dynamics. Second, we perform online distillation to transfer the teacher's robust control capabilities into a transformer-based student policy that operates on sparse root-relative 3D joint keypoint trajectories. By combining history-conditioned adaptation with online distillation, HoRD enables a single policy to adapt zero-shot to unseen domains without per-domain retraining. Extensive experiments show HoRD outperforms strong baselines in robustness and transfer, especially under unseen domains and external perturbations. Code and project page are available at \href{this https URL}{this https URL}.

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