Adapting to My User, Engaging with My Robot: An Adaptive Affective Architecture for a Social Assistive Robot

Author:

Maroto-Gómez Marcos1ORCID,Lewis Matthew2ORCID,Castro-González Álvaro1ORCID,Malfaz María1ORCID,Salichs Miguel Ángel1ORCID,Cañamero Lola3ORCID

Affiliation:

1. Systems Engineering and Automation, University Carlos III of Madrid, Spain

2. EECAIA Lab, Adaptive Systems Research Group, School of Physics, Engineering and Computer Science (SPECS), University of Hertfordshire, UK

3. Full Professor, INEX Chair in Neuroscience and Robotics, ETIS Lab–CY Cergy Paris Université, ENSEA, CNRS UMR 8051, France & Honorary Visiting Professor, Adaptive Systems Research Group, School of Physics, Engineering and Computer Science (SPECS), University of Hertfordshire, UK

Abstract

Affective feedback from social robots is a useful technique for communicating to people whether they are interacting “well” with the robot or not. However, some users, such as people with physical or cognitive difficulties, may not be able to interact in all the desired ways. In these cases, affective feedback from the robot could be excessively negative—an “unhappy” robot, leading to an unrewarding experience for the user. This paper presents a motivation-based architecture for an autonomous multimodal social robot, that incorporates an affective feedback mechanism which generates an affective state by combining the internal needs of the robot and the social interaction quality. The balance between these two factors can dynamically change, allowing the robot to adapt its affective feedback to the user’s interaction style and capabilities. We have implemented this architecture in a simulation and in a MiRo social robot, and report experiments examining the behavior of the system in interactions with different experimental user profiles. The results show that the adaptive mechanism allows the robot to change its affective feedback to give more positive encouragement to users than in non-adaptive cases.

Publisher

Association for Computing Machinery (ACM)

Reference42 articles.

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