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An Ergo-Interactive Framework for Human-Robot Collaboration Via Learning From Demonstration

Zhiwei Liao, Marta Lorenzini, Mattia Leonori, Fei Zhao, Gedong Jiang, Arash Ajoudani

发表年份
2023
引用次数
17

摘要

This work presents an ergonomic and interactive human-robot collaboration (HRC) framework, through which new collaborative skills are extracted from a one-shot human demonstration and learned through Riemannian dynamic movement primitives (DMP). The proposed framework responds to human-robot interaction forces to adapt to the task requirements, while generating virtual “ergonomic forces” that guide the human toward more ergonomic postures, based on online monitoring of a kinematics-based index. The resulting motion is then integrated into the learned task trajectories. The framework is implemented on a mobile manipulator with a weighted whole-body Cartesian velocity controller, which meets the needs of large-scale HRC. To evaluate the proposed framework, a multi-subject experiment involving a human-robot co-carrying task is conducted. The performance of the ergo-interactive control in terms of task performance and ergonomics adaptation is verified under different experimental conditions. This is followed by a comparative statistical analysis. The experimental results show that the learned trajectory can be reproduced and generalized to several targets and adjusted online according to human preferences and ergonomics.

关键词

Task (project management)Computer scienceHuman–computer interactionTrajectoryKinematicsRobotHuman–robot interactionMotion captureAdaptation (eye)Task analysis

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