Humanoid robots are increasingly being integrated into diverse scenarios, such as healthcare facilities, social settings, and workplaces. As the need for intuitive control by non-expert users grows, many studies have explored the use of Artificial Intelligence to enable communication and control. However, these approaches are often tailored to specific robots due to the absence of standardized conventions and notation. This study addresses the challenges posed by these inconsistencies and investigates their impact on the ability of Large Language Models (LLMs) to generate accurate 3D robot poses, even when detailed robot specifications are provided as input.
LLMs and Humanoid Robot Diversity: The Pose Generation Challenge / Catalini, Riccardo; Biagi, Federico; Salici, Giacomo; Borghi, Guido; Vezzani, Roberto; Biagiotti, Luigi. - (2025). ( International Conference on Social Robotics + AI (ICSR+AI) Naples, Italy 10/09/2025).
LLMs and Humanoid Robot Diversity: The Pose Generation Challenge
Riccardo Catalini;Federico Biagi;Giacomo Salici
;Guido Borghi;Roberto Vezzani;Luigi Biagiotti
2025
Abstract
Humanoid robots are increasingly being integrated into diverse scenarios, such as healthcare facilities, social settings, and workplaces. As the need for intuitive control by non-expert users grows, many studies have explored the use of Artificial Intelligence to enable communication and control. However, these approaches are often tailored to specific robots due to the absence of standardized conventions and notation. This study addresses the challenges posed by these inconsistencies and investigates their impact on the ability of Large Language Models (LLMs) to generate accurate 3D robot poses, even when detailed robot specifications are provided as input.| File | Dimensione | Formato | |
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ICSR2025-llmPoseGeneration.pdf
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