Human-robot collaborative transport personalization via Dynamic Movement Primitives and velocity scaling
Franceschi, Paolo, Bussolan, Andrea, Pomponi, Vincenzo, Avram, Oliver, Baraldo, Stefano, Valente, Anna
–arXiv.org Artificial Intelligence
Nowadays, industries are showing a growing interest in human-robot collaboration, particularly for shared tasks. This requires intelligent strategies to plan a robot's motions, considering both task constraints and human-specific factors such as height and movement preferences. This work introduces a novel approach to generate personalized trajectories using Dynamic Movement Primitives (DMPs), enhanced with real-time velocity scaling based on human feedback. The method was rigorously tested in industrial-grade experiments, focusing on the collaborative transport of an engine cowl lip section. Comparative analysis between DMP-generated trajectories and a state-of-the-art motion planner (BiTRRT) highlights their adaptability combined with velocity scaling. Subjective user feedback further demonstrates a clear preference for DMP- based interactions. Objective evaluations, including physiological measurements from brain and skin activity, reinforce these findings, showcasing the advantages of DMPs in enhancing human-robot interaction and improving user experience.
arXiv.org Artificial Intelligence
Nov-11-2025
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- Japan > Honshū
- Kantō > Tokyo Metropolis Prefecture > Tokyo (0.04)
- Middle East > Republic of Türkiye
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- Japan > Honshū
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- Asia
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