Modeling the Dynamics of Nonverbal Behavior on Interpersonal Trust for Human-Robot Interactions
Author(s)
Lee, Jin Joo; Knox, Brad; Breazeal, Cynthia Lynn
DownloadBreazeal_Modeling the.pdf (373.5Kb)
OPEN_ACCESS_POLICY
Open Access Policy
Creative Commons Attribution-Noncommercial-Share Alike
Terms of use
Metadata
Show full item recordAbstract
We describe research towards creating a computational model for recognizing interpersonal trust in social interactions. We found that four negative gestural cues—leaning-backward, face-touching, hand-touching, and crossing-arms—are together predictive of lower levels of trust. Three positive gestural cues—leaning-forward, having arms-in-lap, and open-arms—are predictive of higher levels of trust. We train a probabilistic graphical model using natural social interaction data, a “Trust Hidden Markov Model” that incorporates the occurrence of these seven important gestures throughout the social interaction. This Trust HMM predicts with 69.44% accuracy whether an individual is willing to behave cooperatively or uncooperatively with their novel partner; in comparison, a gesture-ignorant model achieves 63.89% accuracy. We attempt to automate this recognition process by detecting those trust-related behaviors through 3D motion capture technology and gesture recognition algorithms. We aim to eventually create a hierarchical system—with low-level gesture recognition for high-level trust recognition—that is capable of predicting whether an individual finds another to be a trustworthy or untrustworthy partner through their nonverbal expressions.
Date issued
2013-03Department
Massachusetts Institute of Technology. Media Laboratory; Program in Media Arts and Sciences (Massachusetts Institute of Technology)Journal
Proceedings of the 2013 AAAI Spring Symposium Series
Publisher
Association for the Advancement of Artificial Intelligence
Citation
Lee, Jin Joo, Brad Knox, and Cynthia Breazeal. "Modeling the Dynamics of Nonverbal Behavior on Interpersonal Trust for Human-Robot Interactions." The 2013 AAAI Spring Symposium Series, Stanford, California, March 2013.
Version: Author's final manuscript