Attention-Based Map Encoding for Learning Generalized Legged Locomotion
Junzhe He, Chong Zhang, Fabian Jenelten, Ruben Grandia, Moritz B\"Acher, Marco Hutter

TL;DR
This paper introduces an attention-based map encoding method trained with reinforcement learning to improve generalized legged robot locomotion across diverse terrains, combining robustness and precision.
Contribution
It proposes a novel attention-based map encoding conditioned on proprioception, enabling better terrain understanding and control for diverse and challenging environments.
Findings
Effective in real-world tests on quadrupedal and humanoid robots
Robust against uncertainties and terrain sparsity
Able to generalize to unseen terrains
Abstract
Dynamic locomotion of legged robots is a critical yet challenging topic in expanding the operational range of mobile robots. It requires precise planning when possible footholds are sparse, robustness against uncertainties and disturbances, and generalizability across diverse terrains. While traditional model-based controllers excel at planning on complex terrains, they struggle with real-world uncertainties. Learning-based controllers offer robustness to such uncertainties but often lack precision on terrains with sparse steppable areas. Hybrid methods achieve enhanced robustness on sparse terrains by combining both methods but are computationally demanding and constrained by the inherent limitations of model-based planners. To achieve generalized legged locomotion on diverse terrains while preserving the robustness of learning-based controllers, this paper proposes to learn an…
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Taxonomy
TopicsRobotic Locomotion and Control · Robotic Path Planning Algorithms · Zebrafish Biomedical Research Applications
