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Cognitive Modelling of Intention Recognition in Cocktail Mixing

Authors
Linda Heimisch
Technische Universität Berlin ~ Department of Psychology and Ergonomics, Chair of Cognitive Modeling in Dynamic Human-Machine Systems
Nele Russwinkel
N/A
Mrs. Janice Jansen
Abstract

Recognising the intention of a human partner is a key challenge for collaborative systems in human-robot interaction. However, existing studies of intention recognition abilities in AI system mostly focus on data-driven approaches and the recognition of direct action intentions (low-level intentions). We propose an artificial intention recognition approach that is implemented as a cognitive model in the theory-based ACT-R architecture and that infers superordinate action goals (high-level goals). We tested our approach for the recognition of cocktails from mixing sequences performed by human participants in an experimental study. Intention recognition speed of the model was evaluated and compared to human intention recognition performance. Our results indicate that the implemented model successfully recognises high-level intentions and tends to be substantially faster than humans.

Tags

Keywords

Human-robot interaction
intention recognition
cognitive modelling
ACT-R
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Cite this as:

Heimisch, L., Russwinkel, N., & Jansen, J. M. (2023, July). Cognitive Modelling of Intention Recognition in Cocktail Mixing. Paper presented at MathPsych/ICCM/EMPG 2023. Via mathpsych.org/presentation/1144.