Human-robot interaction (HRI) is crucial for fostering seamless and effective collaboration between humans and robots, particularly in Industry 4.0 and related fields. This study investigates the integration of large language models (LLMs) to enhance HRI by enabling natural language understanding and efficient task execution planning. We propose a novel approach that leverages LLMs to facilitate seamless communication between users and robotic systems. The system interprets user intentions conveyed in plain text, plans robotic actions, and executes tasks in real-world scenarios. Through an experimental case study, we validate the effectiveness of this approach. The results vividly underscore the transformative potential of LLMs in bridging the gap between natural language commands and robotic actions, thereby significantly advancing applications in industrial automation and beyond.

A Large Language Model-Based Motion Planning for Human-Robot Interaction: An Experimental Case Study / Coppari, Andrea; Proia, Silvia; Ruo, Andrea; Favali, Filippo; Sabattini, Lorenzo; Secchi, Cristian; Villani, Valeria; Piazzola, Marco; Capra, Luca. - 35:(2025), pp. 99-113. [10.1007/978-3-031-81688-8_8]

A Large Language Model-Based Motion Planning for Human-Robot Interaction: An Experimental Case Study

Proia, Silvia;Ruo, Andrea;Favali, Filippo;Sabattini, Lorenzo;Secchi, Cristian;Villani, Valeria;
2025

Abstract

Human-robot interaction (HRI) is crucial for fostering seamless and effective collaboration between humans and robots, particularly in Industry 4.0 and related fields. This study investigates the integration of large language models (LLMs) to enhance HRI by enabling natural language understanding and efficient task execution planning. We propose a novel approach that leverages LLMs to facilitate seamless communication between users and robotic systems. The system interprets user intentions conveyed in plain text, plans robotic actions, and executes tasks in real-world scenarios. Through an experimental case study, we validate the effectiveness of this approach. The results vividly underscore the transformative potential of LLMs in bridging the gap between natural language commands and robotic actions, thereby significantly advancing applications in industrial automation and beyond.
2025
Inglese
Springer Proceedings in Advanced Robotics
35
99
113
9783031816871
9783031816888
SPRINGER INTERNATIONAL PUBLISHING AG
GEWERBESTRASSE 11, CHAM, CH-6330, SWITZERLAND
Large language models (LLMs); human-robot interaction ( HRI); natural language processing; task planning; automatic control; autonomous planning
A Large Language Model-Based Motion Planning for Human-Robot Interaction: An Experimental Case Study / Coppari, Andrea; Proia, Silvia; Ruo, Andrea; Favali, Filippo; Sabattini, Lorenzo; Secchi, Cristian; Villani, Valeria; Piazzola, Marco; Capra, Luca. - 35:(2025), pp. 99-113. [10.1007/978-3-031-81688-8_8]
Coppari, Andrea; Proia, Silvia; Ruo, Andrea; Favali, Filippo; Sabattini, Lorenzo; Secchi, Cristian; Villani, Valeria; Piazzola, Marco; Capra, Luca...espandi
9
Contributo su VOLUME::Capitolo/Saggio
268
none
info:eu-repo/semantics/bookPart
   Socially-acceptable Extended Reality Models and Systems
   SERMAS
   European Commission
   Horizon Europe Framework Programme
   101070351
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1377330
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