Ergonomics and human comfort are essential concerns in physical human-robot interaction. Common practical methods in the area either fail in estimating the correct posture due to occlusion or suffer from inaccurate ergonomics models in performing postural optimization. We propose a novel alternative framework for posture estimation, assessment, and optimization for ergonomically intelligent physical human-robot interaction. We show that we can estimate human posture solely from the trajectory of the interacting robot with median deviation of 5 deg from motion capture. We propose DULA, a differentiable ergonomics assessment tool with 99.73% accuracy comparing to RULA. We use DULA in postural optimization for physical human-robot interaction tasks such as co-manipulation and teleoperation. We evaluate our framework through human and simulation experiments.
@article{arxiv.2108.05971,
title = {Ergonomically Intelligent Physical Human-Robot Interaction: Postural Estimation, Assessment, and Optimization},
author = {Amir Yazdani and Roya Sabbagh Novin and Andrew Merryweather and Tucker Hermans},
journal= {arXiv preprint arXiv:2108.05971},
year = {2021}
}
Comments
Presented at AI-HRI symposium as part of AAAI-FSS 2021 (arXiv:2109.10836)