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Task Adaptation in Industrial Human-Robot Interaction: Leveraging Riemannian Motion Policies

Authors :
Allenspach, Mike
Pantic, Michael
Girod, Rik
Ott, Lionel
Siegwart, Roland
Source :
Robotics, Science and Systems (RSS) 2024
Publication Year :
2024

Abstract

In real-world industrial environments, modern robots often rely on human operators for crucial decision-making and mission synthesis from individual tasks. Effective and safe collaboration between humans and robots requires systems that can adjust their motion based on human intentions, enabling dynamic task planning and adaptation. Addressing the needs of industrial applications, we propose a motion control framework that (i) removes the need for manual control of the robot's movement; (ii) facilitates the formulation and combination of complex tasks; and (iii) allows the seamless integration of human intent recognition and robot motion planning. For this purpose, we leverage a modular and purely reactive approach for task parametrization and motion generation, embodied by Riemannian Motion Policies. The effectiveness of our method is demonstrated, evaluated, and compared to \remove{state-of-the-art approaches}\add{a representative state-of-the-art approach} in experimental scenarios inspired by realistic industrial Human-Robot Interaction settings.<br />Comment: 9 pages; Robotics, Science and Systems (RSS) 2024

Subjects

Subjects :
Computer Science - Robotics

Details

Database :
arXiv
Journal :
Robotics, Science and Systems (RSS) 2024
Publication Type :
Report
Accession number :
edsarx.2406.17333
Document Type :
Working Paper