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Behavior Tree Generation using Large Language Models for Sequential Manipulation Planning with Human Instructions and Feedback

Authors :
Ao, Jicong
Wu, Yansong
Wu, Fan
Haddadin, Sami
Source :
ICRA 2024 Workshop Exploring Role Allocation in Human-Robot Co-Manipulation
Publication Year :
2024

Abstract

In this work, we propose an LLM-based BT generation framework to leverage the strengths of both for sequential manipulation planning. To enable human-robot collaborative task planning and enhance intuitive robot programming by nonexperts, the framework takes human instructions to initiate the generation of action sequences and human feedback to refine BT generation in runtime. All presented methods within the framework are tested on a real robotic assembly example, which uses a gear set model from the Siemens Robot Assembly Challenge. We use a single manipulator with a tool-changing mechanism, a common practice in flexible manufacturing, to facilitate robust grasping of a large variety of objects. Experimental results are evaluated regarding success rate, logical coherence, executability, time consumption, and token consumption. To our knowledge, this is the first human-guided LLM-based BT generation framework that unifies various plausible ways of using LLMs to fully generate BTs that are executable on the real testbed and take into account granular knowledge of tool use.

Subjects

Subjects :
Computer Science - Robotics

Details

Database :
arXiv
Journal :
ICRA 2024 Workshop Exploring Role Allocation in Human-Robot Co-Manipulation
Publication Type :
Report
Accession number :
edsarx.2409.09435
Document Type :
Working Paper