Naturalistic Robot Arm Trajectory Generation via Representation Learning
Abstract
The integration of manipulator robots in household environments suggests a need for more predictable and human-like robot motion. This holds especially true for wheelchair-mounted assistive robots that can support the independence of people with paralysis. One method of generating naturalistic motion trajectories is via the imitation of human demonstrators. This paper explores a self-supervised imitation learning method using an autoregressive spatio-temporal graph neural network for an assistive drinking task. We address learning from diverse human motion trajectory data that were captured via wearable IMU sensors on a human arm as the action-free task demonstrations. Observed arm motion data from several participants is used to generate natural and functional drinking motion trajectories for a UR5e robot arm.
Cite
@article{arxiv.2309.07550,
title = {Naturalistic Robot Arm Trajectory Generation via Representation Learning},
author = {Jayjun Lee and Adam J. Spiers},
journal= {arXiv preprint arXiv:2309.07550},
year = {2023}
}
Comments
4 pages, 3 figures