Real-World Cooking Robot System from Recipes Based on Food State Recognition Using Foundation Models and PDDL

Kanazawa, Naoaki, Kawaharazuka, Kento, Obinata, Yoshiki, Okada, Kei, Inaba, Masayuki

arXiv.org Artificial Intelligence 

Although there is a growing demand for cooking behaviours as one of the expected tasks for robots, a series of cooking behaviours based on new recipe descriptions by robots in the real world has not yet been realised. In this study, we propose a robot system that integrates real-world executable robot cooking behaviour planning using the Large Language Model (LLM) and classical planning of PDDL descriptions, and food ingredient state recognition learning from a small number of data using the Vision-Language model (VLM). We succeeded in experiments in which PR2, a dual-armed wheeled robot, performed cooking from arranged new recipes in a real-world environment, and confirmed the effectiveness of the proposed system.

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