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Deep Imitation Learning for Humanoid Loco-manipulation Through Human Teleoperation

Mingyo Seo,Steve Han,4 Authors,Yuke Zhu

2023 · DOI: 10.1109/Humanoids57100.2023.10375203
IEEE-RAS International Conference on Humanoid Robots · 83 Citations

TLDR

This work introduces TRILL, a data-efficient framework for training humanoid loco-manipulation policies from human demonstrations that employs the whole-body control formulation to transform task-space commands by human operators into the robot's joint-torque actuation while stabilizing its dynamics.

Abstract

We tackle the problem of developing humanoid loco-manipulation skills with deep imitation learning. The difficulty of collecting task demonstrations and training policies for humanoids with a high degree of freedom presents substantial challenges. We introduce TRILL, a data-efficient framework for training humanoid loco-manipulation policies from human demonstrations. In this framework, we collect human demonstration data through an intuitive Virtual Reality (VR) interface. We employ the whole-body control formulation to transform task-space commands by human operators into the robot's joint-torque actuation while stabilizing its dynamics. By employing high-level action abstractions tailored for humanoid loco-manipulation, our method can efficiently learn complex sensorimotor skills. We demonstrate the effectiveness of TRILL in simulation and on a real-world robot for performing various loco-manipulation tasks. Videos and additional materials can be found on the project page: https://ut-austin-rpl.github.io/TRILL.

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