Human-Like Gaze Behavior in Social Robots: A Deep Learning Approach Integrating Human and Non-Human Stimuli
Faezeh Vahedi, Morteza Memari, Ramtin Tabatabaei, Alireza Taheri

TL;DR
This paper develops deep learning models to enable social robots to mimic human gaze behavior across diverse social situations, including responses to non-human stimuli, improving interaction effectiveness and user satisfaction.
Contribution
It introduces a novel approach integrating neural networks to predict gaze behavior considering both human and non-human stimuli, advancing social robot responsiveness.
Findings
Neural networks achieved over 70% prediction accuracy in simulated scenarios.
Models outperform existing methods in gaze prediction accuracy.
High user satisfaction reported in robot-human interactions.
Abstract
Nonverbal behaviors, particularly gaze direction, play a crucial role in enhancing effective communication in social interactions. As social robots increasingly participate in these interactions, they must adapt their gaze based on human activities and remain receptive to all cues, whether human-generated or not, to ensure seamless and effective communication. This study aims to increase the similarity between robot and human gaze behavior across various social situations, including both human and non-human stimuli (e.g., conversations, pointing, door openings, and object drops). A key innovation in this study, is the investigation of gaze responses to non-human stimuli, a critical yet underexplored area in prior research. These scenarios, were simulated in the Unity software as a 3D animation and a 360-degree real-world video. Data on gaze directions from 41 participants were collected…
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Taxonomy
TopicsSocial Robot Interaction and HRI · Gaze Tracking and Assistive Technology · Face Recognition and Perception
