Real-world humanoid locomotion with reinforcement learning

Author:

Radosavovic Ilija1ORCID,Xiao Tete1ORCID,Zhang Bike1ORCID,Darrell Trevor1,Malik Jitendra1ORCID,Sreenath Koushil1ORCID

Affiliation:

1. University of California, Berkeley CA, USA.

Abstract

Humanoid robots that can autonomously operate in diverse environments have the potential to help address labor shortages in factories, assist elderly at home, and colonize new planets. Although classical controllers for humanoid robots have shown impressive results in a number of settings, they are challenging to generalize and adapt to new environments. Here, we present a fully learning-based approach for real-world humanoid locomotion. Our controller is a causal transformer that takes the history of proprioceptive observations and actions as input and predicts the next action. We hypothesized that the observation-action history contains useful information about the world that a powerful transformer model can use to adapt its behavior in context, without updating its weights. We trained our model with large-scale model-free reinforcement learning on an ensemble of randomized environments in simulation and deployed it to the real-world zero-shot. Our controller could walk over various outdoor terrains, was robust to external disturbances, and could adapt in context.

Publisher

American Association for the Advancement of Science (AAAS)

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