Learning Terrain-Specialized Policies for Adaptive Locomotion in Challenging Environments
By: Matheus P. Angarola, Francisco Affonso, Marcelo Becker
Potential Business Impact:
Robots walk better on tricky ground without seeing.
Legged robots must exhibit robust and agile locomotion across diverse, unstructured terrains, a challenge exacerbated under blind locomotion settings where terrain information is unavailable. This work introduces a hierarchical reinforcement learning framework that leverages terrain-specialized policies and curriculum learning to enhance agility and tracking performance in complex environments. We validated our method on simulation, where our approach outperforms a generalist policy by up to 16% in success rate and achieves lower tracking errors as the velocity target increases, particularly on low-friction and discontinuous terrains, demonstrating superior adaptability and robustness across mixed-terrain scenarios.
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