What Can You See? Identifying Cues on Internal States From the Movements of Natural Social Interactions
In recent years, the field of Human-Robot Interaction (HRI) has seen an increasing demand for technologies that can recognize and adapt to human behaviors and internal states (e.g., emotions and intentions). Psychological research suggests that human movements are important for inferring internal st...
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doaj-baecbfae3b9041698859b5038c9cf0aa2020-11-25T02:03:27ZengFrontiers Media S.A.Frontiers in Robotics and AI2296-91442019-06-01610.3389/frobt.2019.00049447879What Can You See? Identifying Cues on Internal States From the Movements of Natural Social InteractionsMadeleine E. Bartlett0Charlotte E. R. Edmunds1Tony Belpaeme2Tony Belpaeme3Serge Thill4Serge Thill5Séverin Lemaignan6Centre for Robotics and Neural Systems (CRNS), University of Plymouth, Plymouth, United KingdomWarwick Business School, University of Warwick, Coventry, United KingdomCentre for Robotics and Neural Systems (CRNS), University of Plymouth, Plymouth, United KingdomID Lab—imec, University of Ghent, Ghent, BelgiumInteraction Lab, School of Informatics, University of Skövde, Skövde, SwedenDonders Institute for Brain, Cognition, and Behavior, Radboud University, Nijmegen, NetherlandsBristol Robotics Lab, University of the West of England, Bristol, United KingdomIn recent years, the field of Human-Robot Interaction (HRI) has seen an increasing demand for technologies that can recognize and adapt to human behaviors and internal states (e.g., emotions and intentions). Psychological research suggests that human movements are important for inferring internal states. There is, however, a need to better understand what kind of information can be extracted from movement data, particularly in unconstrained, natural interactions. The present study examines which internal states and social constructs humans identify from movement in naturalistic social interactions. Participants either viewed clips of the full scene or processed versions of it displaying 2D positional data. Then, they were asked to fill out questionnaires assessing their social perception of the viewed material. We analyzed whether the full scene clips were more informative than the 2D positional data clips. First, we calculated the inter-rater agreement between participants in both conditions. Then, we employed machine learning classifiers to predict the internal states of the individuals in the videos based on the ratings obtained. Although we found a higher inter-rater agreement for full scenes compared to positional data, the level of agreement in the latter case was still above chance, thus demonstrating that the internal states and social constructs under study were identifiable in both conditions. A factor analysis run on participants' responses showed that participants identified the constructs interaction imbalance, interaction valence and engagement regardless of video condition. The machine learning classifiers achieved a similar performance in both conditions, again supporting the idea that movement alone carries relevant information. Overall, our results suggest it is reasonable to expect a machine learning algorithm, and consequently a robot, to successfully decode and classify a range of internal states and social constructs using low-dimensional data (such as the movements and poses of observed individuals) as input.https://www.frontiersin.org/article/10.3389/frobt.2019.00049/fullsocial psychologyhuman-robot interactionmachine learningsocial interactionrecognition |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Madeleine E. Bartlett Charlotte E. R. Edmunds Tony Belpaeme Tony Belpaeme Serge Thill Serge Thill Séverin Lemaignan |
spellingShingle |
Madeleine E. Bartlett Charlotte E. R. Edmunds Tony Belpaeme Tony Belpaeme Serge Thill Serge Thill Séverin Lemaignan What Can You See? Identifying Cues on Internal States From the Movements of Natural Social Interactions Frontiers in Robotics and AI social psychology human-robot interaction machine learning social interaction recognition |
author_facet |
Madeleine E. Bartlett Charlotte E. R. Edmunds Tony Belpaeme Tony Belpaeme Serge Thill Serge Thill Séverin Lemaignan |
author_sort |
Madeleine E. Bartlett |
title |
What Can You See? Identifying Cues on Internal States From the Movements of Natural Social Interactions |
title_short |
What Can You See? Identifying Cues on Internal States From the Movements of Natural Social Interactions |
title_full |
What Can You See? Identifying Cues on Internal States From the Movements of Natural Social Interactions |
title_fullStr |
What Can You See? Identifying Cues on Internal States From the Movements of Natural Social Interactions |
title_full_unstemmed |
What Can You See? Identifying Cues on Internal States From the Movements of Natural Social Interactions |
title_sort |
what can you see? identifying cues on internal states from the movements of natural social interactions |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Robotics and AI |
issn |
2296-9144 |
publishDate |
2019-06-01 |
description |
In recent years, the field of Human-Robot Interaction (HRI) has seen an increasing demand for technologies that can recognize and adapt to human behaviors and internal states (e.g., emotions and intentions). Psychological research suggests that human movements are important for inferring internal states. There is, however, a need to better understand what kind of information can be extracted from movement data, particularly in unconstrained, natural interactions. The present study examines which internal states and social constructs humans identify from movement in naturalistic social interactions. Participants either viewed clips of the full scene or processed versions of it displaying 2D positional data. Then, they were asked to fill out questionnaires assessing their social perception of the viewed material. We analyzed whether the full scene clips were more informative than the 2D positional data clips. First, we calculated the inter-rater agreement between participants in both conditions. Then, we employed machine learning classifiers to predict the internal states of the individuals in the videos based on the ratings obtained. Although we found a higher inter-rater agreement for full scenes compared to positional data, the level of agreement in the latter case was still above chance, thus demonstrating that the internal states and social constructs under study were identifiable in both conditions. A factor analysis run on participants' responses showed that participants identified the constructs interaction imbalance, interaction valence and engagement regardless of video condition. The machine learning classifiers achieved a similar performance in both conditions, again supporting the idea that movement alone carries relevant information. Overall, our results suggest it is reasonable to expect a machine learning algorithm, and consequently a robot, to successfully decode and classify a range of internal states and social constructs using low-dimensional data (such as the movements and poses of observed individuals) as input. |
topic |
social psychology human-robot interaction machine learning social interaction recognition |
url |
https://www.frontiersin.org/article/10.3389/frobt.2019.00049/full |
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