A Probabilistic Model Of Interaction Dynamics for Dyadic Face-to-Face Settings
Renke Wang, Ifeoma Nwogu

TL;DR
This paper introduces a probabilistic model that captures and predicts the dynamic non-verbal interaction patterns between two people in face-to-face conversations, enhancing realistic human-agent communication.
Contribution
It presents a novel probabilistic approach to model and generate interaction dynamics in dyadic face-to-face settings, including unseen communication modes.
Findings
Successfully captures interaction dynamics in natural conversations
Effectively distinguishes between different communication modes
Improves prediction of future non-verbal behaviors
Abstract
Natural conversations between humans often involve a large number of non-verbal nuanced expressions, displayed at key times throughout the conversation. Understanding and being able to model these complex interactions is essential for creating realistic human-agent communication, whether in the virtual or physical world. As social robots and intelligent avatars emerge in popularity and utility, being able to realistically model and generate these dynamic expressions throughout conversations is critical. We develop a probabilistic model to capture the interaction dynamics between pairs of participants in a face-to-face setting, allowing for the encoding of synchronous expressions between the interlocutors. This interaction encoding is then used to influence the generation when predicting one agent's future dynamics, conditioned on the other's current dynamics. FLAME features are…
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Taxonomy
TopicsSocial Robot Interaction and HRI
MethodsTest
