In this paper we present a system for automatic prediction of extraversion during the first thin slices of human-robot interaction (HRI). This work is based on the hypothesis that personality traits and attitude towards robot appear in the behavioural response of humans during HRI. We propose a set of four non-verbal movement features that characterize human behavior during the interaction. We focus our study on predicting Extraversion using these features extracted from a dataset consisting of 39 healthy adults interacting with the humanoid iCub. Our analysis shows that it is possible to predict to a good level (64%) the Extraversion of a human from a thin slice of interaction relying only on non-verbal movement features. Our results are comparable to the stateof-the-art obtained in HHI [23].
CITATION STYLE
Rahbar, F., Anzalone, S. M., Varni, G., Zibetti, E., Ivaldi, S., & Chetouani, M. (2015). Predicting extraversion from non-verbal features during a face-to-face human-robot interaction. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 9388 LNCS, pp. 543–553). Springer Verlag. https://doi.org/10.1007/978-3-319-25554-5_54
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