ROAILGFeb 14, 2025

BeamDojo: Learning Agile Humanoid Locomotion on Sparse Footholds

arXiv:2502.10363v381 citationsh-index: 21Robotics
Originality Incremental advance
AI Analysis

This addresses the challenge of risky terrain navigation for humanoid robots, representing an incremental improvement over existing learning-based methods.

The paper tackles the problem of enabling humanoid robots to traverse terrains with sparse footholds by introducing BeamDojo, a reinforcement learning framework that achieves agile locomotion with precise foot placement, maintaining a high success rate in real-world experiments.

Traversing risky terrains with sparse footholds poses a significant challenge for humanoid robots, requiring precise foot placements and stable locomotion. Existing learning-based approaches often struggle on such complex terrains due to sparse foothold rewards and inefficient learning processes. To address these challenges, we introduce BeamDojo, a reinforcement learning (RL) framework designed for enabling agile humanoid locomotion on sparse footholds. BeamDojo begins by introducing a sampling-based foothold reward tailored for polygonal feet, along with a double critic to balancing the learning process between dense locomotion rewards and sparse foothold rewards. To encourage sufficient trial-and-error exploration, BeamDojo incorporates a two-stage RL approach: the first stage relaxes the terrain dynamics by training the humanoid on flat terrain while providing it with task-terrain perceptive observations, and the second stage fine-tunes the policy on the actual task terrain. Moreover, we implement a onboard LiDAR-based elevation map to enable real-world deployment. Extensive simulation and real-world experiments demonstrate that BeamDojo achieves efficient learning in simulation and enables agile locomotion with precise foot placement on sparse footholds in the real world, maintaining a high success rate even under significant external disturbances.

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