AIOct 18, 2021

Forecasting Nonverbal Social Signals during Dyadic Interactions with Generative Adversarial Neural Networks

arXiv:2110.09378v14 citations
Originality Synthesis-oriented
AI Analysis

This research addresses the need for social robots to engage in humanlike nonverbal communication for applications in education, healthcare, and daily life, though it appears incremental in modeling existing behaviors.

The paper tackled the problem of forecasting human nonverbal social signals during dyadic interactions to develop robotic interfaces that can imitate human interactions, aiming to improve perception and outcomes in social interactions.

We are approaching a future where social robots will progressively become widespread in many aspects of our daily lives, including education, healthcare, work, and personal use. All of such practical applications require that humans and robots collaborate in human environments, where social interaction is unavoidable. Along with verbal communication, successful social interaction is closely coupled with the interplay between nonverbal perception and action mechanisms, such as observation of gaze behaviour and following their attention, coordinating the form and function of hand gestures. Humans perform nonverbal communication in an instinctive and adaptive manner, with no effort. For robots to be successful in our social landscape, they should therefore engage in social interactions in a humanlike way, with increasing levels of autonomy. In particular, nonverbal gestures are expected to endow social robots with the capability of emphasizing their speech, or showing their intentions. Motivated by this, our research sheds a light on modeling human behaviors in social interactions, specifically, forecasting human nonverbal social signals during dyadic interactions, with an overarching goal of developing robotic interfaces that can learn to imitate human dyadic interactions. Such an approach will ensure the messages encoded in the robot gestures could be perceived by interacting partners in a facile and transparent manner, which could help improve the interacting partner perception and makes the social interaction outcomes enhanced.

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