CASIE – Computing affect and social intelligence for healthcare in an ethical and trustworthy manner
Vasiliu Laurentiu,
Cortis Keith,
McDermott Ross,
Kerr Aphra,
Peters Arne,
Hesse Marc,
Hagemeyer Jens,
Belpaeme Tony,
McDonald John,
Villing Rudi,
Mileo Alessandra,
Caputo Annalina,
Scriney Michael,
Griffiths Sascha,
Koumpis Adamantios,
Davis Brian
Affiliations
Vasiliu Laurentiu
Peracton Ltd., Dublin, Ireland
Cortis Keith
School of Computing, Dublin City University, Dublin, Ireland
McDermott Ross
School of Computing, Dublin City University, Dublin, Ireland
Kerr Aphra
Department of Sociology, Maynooth University, Kildare, Ireland
Peters Arne
Informatik 6 - Lehrstuhl für Robotik, Künstliche Intelligenz und Echtzeitsysteme Fakultät für Informatik, Technische Universität München, Munich, Germany
Hesse Marc
Cognitronics & Sensor Systems Group, Center for Cognitive Interaction Technology (CITEC), Universität Bielefeld, Bielefeld, Germany
Hagemeyer Jens
Cognitronics & Sensor Systems Group, Center for Cognitive Interaction Technology (CITEC), Universität Bielefeld, Bielefeld, Germany
Belpaeme Tony
IDLab, Department of Electronics and Information Systems, Ghent University, Ghent, Belgium
McDonald John
Department of Computer Science, Maynooth University, Kildare, Ireland
Villing Rudi
Department of Computer Science, Maynooth University, Kildare, Ireland
Mileo Alessandra
School of Computing, Dublin City University, Dublin, Ireland
Caputo Annalina
School of Computing, Dublin City University, Dublin, Ireland
Scriney Michael
School of Computing, Dublin City University, Dublin, Ireland
Griffiths Sascha
NoosWare BV, Amsterdam, The Netherlands
Koumpis Adamantios
Berner Fachhochschule, Business School, Institute Digital Enabling, Bern, Switzerland
Davis Brian
School of Computing, Dublin City University, Dublin, Ireland
This article explores the rapidly advancing innovation to endow robots with social intelligence capabilities in the form of multilingual and multimodal emotion recognition, and emotion-aware decision-making capabilities, for contextually appropriate robot behaviours and cooperative social human–robot interaction for the healthcare domain. The objective is to enable robots to become trustworthy and versatile social robots capable of having human-friendly and human assistive interactions, utilised to better assist human users’ needs by enabling the robot to sense, adapt, and respond appropriately to their requirements while taking into consideration their wider affective, motivational states, and behaviour. We propose an innovative approach to the difficult research challenge of endowing robots with social intelligence capabilities for human assistive interactions, going beyond the conventional robotic sense-think-act loop. We propose an architecture that addresses a wide range of social cooperation skills and features required for real human–robot social interaction, which includes language and vision analysis, dynamic emotional analysis (long-term affect and mood), semantic mapping to improve the robot’s knowledge of the local context, situational knowledge representation, and emotion-aware decision-making. Fundamental to this architecture is a normative ethical and social framework adapted to the specific challenges of robots engaging with caregivers and care-receivers.