Physiological data for affective computing in HRI with anthropomorphic service robots: the AFFECT-HRI data set

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Abstract

In human-human and human-robot interaction, the counterpart influences the human’s affective state. Contrary to humans, robots inherently cannot respond empathically, meaning non-beneficial affective reactions cannot be mitigated. Thus, to create a responsible and empathetic human-robot interaction (HRI), involving anthropomorphic service robots, the effect of robot behavior on human affect in HRI must be understood. To contribute to this understanding, we provide the new comprehensive data set AFFECT-HRI, including, for the first time, physiological data labeled with human affect (i.e., emotions and mood) gathered from a conducted HRI study. Within the study, 146 participants interacted with an anthropomorphic service robot in a realistic and complex retail scenario. The participants’ questionnaire ratings regarding affect, demographics, and socio-technical ratings are provided in the data set. Five different conditions (i.e., neutral, transparency, liability, moral, and immoral) were considered during the study, eliciting different affective reactions and allowing interdisciplinary investigations (e.g., computer science, law, and psychology). Each condition includes three scenes: a consultation regarding products, a request for sensitive personal information, and a handover.

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CITATION STYLE

APA

Heinisch, J. S., Kirchhoff, J., Busch, P., Wendt, J., von Stryk, O., & David, K. (2024). Physiological data for affective computing in HRI with anthropomorphic service robots: the AFFECT-HRI data set. Scientific Data, 11(1). https://doi.org/10.1038/s41597-024-03128-z

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