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Learning Responsive Humanoid Motion Skills From Graph-Powered Motion Matching | IEEE Journals & Magazine | IEEE Xplore

Learning Responsive Humanoid Motion Skills From Graph-Powered Motion Matching


Abstract:

To achieve robot motion imitating, it is important to ensure morphological similarity, physical feasibility, and generalization of actions between robots and motion captu...Show More

Abstract:

To achieve robot motion imitating, it is important to ensure morphological similarity, physical feasibility, and generalization of actions between robots and motion capture datasets. Traditional motion controllers require designing controllers for each motion type, which can be time-consuming to adjust controller parameters. However, reinforcement learning algorithms are increasingly used in robot motion control, enabling robots or physical simulation characters to learn skills such as maintaining balance or completing specific tasks. This paper presents a system for action learning imitation, allowing robots to imitate flexible graph-powered motion matching datasets. By incorporating domain randomization methods during training, the model can maintain robustness even when the environment or model is in error, enabling the action model obtained in simulation to be deployed to the real robot. To experimentally verify the proposed method, the paper designs a simulation environment for a 20 degree-of-freedom multi-joint bipedal robot and deploys the trained robot behavior model on the roban robot for imitation action learning and responsive dynamic walking.
Published in: IEEE Transactions on Consumer Electronics ( Volume: 70, Issue: 1, February 2024)
Page(s): 2909 - 2916
Date of Publication: 18 July 2023

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I. Introduction

Compared to wheeled robots, bipedal robots exhibit enhanced capabilities in terms of mobility and workspace accessibility in challenging terrains such as mountainous forests [1]. Additionally, they possess lower joint complexity and energy consumption in comparison to other legged robots [2]. With a human-like appearance, they are aesthetically appealing and have the potential for applications in fields such as education, companionship, rehabilitation, and nursing. However, the design of their gait is a complex interdisciplinary challenge involving biomechanics, mechanical engineering, and control theory, due to the high degree of freedom, nonlinearity, and strong coupling inherent in their movement. Hence, the design of a gait with improved energy efficiency, speed, and stability remains a central research question since the inception of bipedal robots. The control of bipedal robots’ gait holds significant significance in advancing the application of humanoid robots and advancing our understanding of human gait generation and operation.

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