Home /Research /Symmetry-Guided Memory Augmentation for Efficient Locomotion Learning
LOCOMOTION

Symmetry-Guided Memory Augmentation for Efficient Locomotion Learning

Kaixi Bao, Chenhao Li, Yarden As, Andreas Krause, Marco Hutter

Year
2025
Access
Open access

Abstract

Training reinforcement learning (RL) policies for legged locomotion often requires extensive environment interactions, which are costly and time-consuming. We propose Symmetry-Guided Memory Augmentation (SGMA), a framework that improves training efficiency by combining structured experience augmentation with memory-based context inference. Our method leverages robot and task symmetries to generate additional, physically consistent training experiences without requiring extra interactions. To avoid the pitfalls of naive augmentation, we extend these transformations to the policy's memory states, enabling the agent to retain task-relevant context and adapt its behavior accordingly. We evaluate the approach on quadruped and humanoid robots in simulation, as well as on a real quadruped platform. Across diverse locomotion tasks involving joint failures and payload variations, our method achieves efficient policy training while maintaining robust performance, demonstrating a practical route toward data-efficient RL for legged robots.

Keywords

cs.LGcs.AIcs.RO

Related papers

Browse all LOCOMOTION papers