Title :
Analysis and Predictive Modeling of Body Language Behavior in Dyadic Interactions From Multimodal Interlocutor Cues
Author :
Zhaojun Yang ; Metallinou, Angeliki ; Narayanan, Shrikanth
Author_Institution :
Dept. of Electr. Eng., Univ. of Southern California, Los Angeles, CA, USA
Abstract :
During dyadic interactions, participants adjust their behavior and give feedback continuously in response to the behavior of their interlocutors and the interaction context. In this paper, we study how a participant in a dyadic interaction adapts his/her body language to the behavior of the interlocutor, given the interaction goals and context. We apply a variety of psychology-inspired body language features to describe body motion and posture. We first examine the coordination between the dyad´s behavior for two interaction stances: friendly and conflictive. The analysis empirically reveals the dyad´s behavior coordination, and helps identify informative interlocutor features with respect to the participant´s target body language features. The coordination patterns between the dyad´s behavior are found to depend on the interaction stances assumed. We apply a Gaussian-Mixture-Model-based (GMM) statistical mapping in combination with a Fisher kernel framework for automatically predicting the body language of an interacting participant from the speech and gesture behavior of an interlocutor. The experimental results show that the Fisher kernel-based approach outperforms methods using only the GMM-based mapping, and using the support vector regression, in terms of correlation coefficient and RMSE. These results suggest a significant level of predictability of body language behavior from interlocutor cues.
Keywords :
Gaussian processes; behavioural sciences computing; gesture recognition; image motion analysis; mixture models; regression analysis; support vector machines; Fisher kernel-based approach; GMM; GMM-based mapping; Gaussian-mixture-model-based statistical mapping; RMSE correlation coefficient; behavior coordination; body language behavior; dyadic interactions; gesture behavior; interaction context; interaction goals; interlocutor features; multimodal interlocutor cues; predictive modeling; psychology-inspired body language features; speech behavior; support vector regression; Context; Correlation; Databases; Feature extraction; Kernel; Predictive models; Speech; Behavior coordination; body language; dyadic interactions; interaction goals; motion capture;
Journal_Title :
Multimedia, IEEE Transactions on
DOI :
10.1109/TMM.2014.2328311