Abstract
We present a real-time, data-driven algorithm to
enhance the social-invisibility of robots within crowds. Our
approach is based on prior psychological research, which
reveals that people notice and–importantly–react negatively to
groups of social actors when they have high entitativity, moving
in a tight group with similar appearances and trajectories. In
order to evaluate that behavior, we performed a user study
to develop navigational algorithms that minimize entitativity.
This study establishes mapping between emotional reactions
and multi-robot trajectories and appearances, and further
generalizes the finding across various environmental conditions.
We demonstrate the applicability of our entitativity modeling
for trajectory computation for active surveillance and dynamic
intervention in simulated robot-human interaction scenarios.
Our approach empirically shows that various levels of entitative
robots can be used to both avoid and influence pedestrians
while not eliciting strong emotional reactions, giving multi-robot
systems socially-invisibility.
Paper
Socially Invisible Robot: Navigation in the Social World using Robot Entitativity, IROS 2018.
Aniket Bera, Tanmay Randhavane, Emily Kubin, Austin Wang, Kurt Gray, and Dinesh Manocha
@article{Bera2018TheSI,
title={The Socially Invisible Robot Navigation in the Social World Using Robot Entitativity},
author={Aniket Bera and Tanmay Randhavane and Emily Kubin and Austin Wang and Kurt Gray and Dinesh Manocha},
journal={2018 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)},
year={2018},
pages={4468-4475}
}