Using Physiological Measures, Gaze, and Facial Expressions to Model Human Trust in a Robot Partner
Journal:
arXiv
Published Date:
Apr 7, 2025
Abstract
With robots becoming increasingly prevalent in various domains, it has become
crucial to equip them with tools to achieve greater fluency in interactions
with humans. One of the promising areas for further exploration lies in human
trust. A real-time, objective model of human trust could be used to maximize
productivity, preserve safety, and mitigate failure. In this work, we attempt
to use physiological measures, gaze, and facial expressions to model human
trust in a robot partner. We are the first to design an in-person, human-robot
supervisory interaction study to create a dedicated trust dataset. Using this
dataset, we train machine learning algorithms to identify the objective
measures that are most indicative of trust in a robot partner, advancing trust
prediction in human-robot interactions. Our findings indicate that a
combination of sensor modalities (blood volume pulse, electrodermal activity,
skin temperature, and gaze) can enhance the accuracy of detecting human trust
in a robot partner. Furthermore, the Extra Trees, Random Forest, and Decision
Trees classifiers exhibit consistently better performance in measuring the
person's trust in the robot partner. These results lay the groundwork for
constructing a real-time trust model for human-robot interaction, which could
foster more efficient interactions between humans and robots.