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CoBT: Collaborative Programming of Behaviour Trees from One Demonstration for Robot Manipulation

Aayush Jain, Philip Long, Valeria Villani, John D. Kelleher, Maria Chiara Leva

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Abstract

Mass customization and shorter manufacturing cycles are becoming more important among small and medium- sized companies. However, classical industrial robots struggle to cope with product variation and dynamic environments. In this paper, we present CoBT, a collaborative programming by demonstration framework for generating reactive and modular behavior trees. CoBT relies on a single demonstration and a combination of data-driven machine learning methods with logic-based declarative learning to learn a task, thus eliminating the need for programming expertise or long development times. The proposed framework is experimentally validated on 7 manipulation tasks and we show that CoBT achieves ≈93% success rate overall with an average of 7.5s pro- gramming time. We conduct a pilot study with non-expert users to provide feedback regarding the usability of CoBT. More videos and generated behavior trees are available at: https://github.com/jainaayush2006/CoBT.git.

Index terms

Human-Robot Collaboration Human-Centered Automation Learning from Demonstration