Trust and Cognitive Load During Human-Robot Interaction
September 11, 2019 Β· Declared Dead Β· π arXiv.org
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Authors
Muneeb Imtiaz Ahmad, Jasmin Bernotat, Katrin Lohan, Friederike Eyssel
arXiv ID
1909.05160
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.AI,
cs.RO
Citations
42
Venue
arXiv.org
Last Checked
3 months ago
Abstract
This paper presents an exploratory study to understand the relationship between a humans' cognitive load, trust, and anthropomorphism during human-robot interaction. To understand the relationship, we created a \say{Matching the Pair} game that participants could play collaboratively with one of two robot types, Husky or Pepper. The goal was to understand if humans would trust the robot as a teammate while being in the game-playing situation that demanded a high level of cognitive load. Using a humanoid vs. a technical robot, we also investigated the impact of physical anthropomorphism and we furthermore tested the impact of robot error rate on subsequent judgments and behavior. Our results showed that there was an inversely proportional relationship between trust and cognitive load, suggesting that as the amount of cognitive load increased in the participants, their ratings of trust decreased. We also found a triple interaction impact between robot-type, error-rate and participant's ratings of trust. We found that participants perceived Pepper to be more trustworthy in comparison with the Husky robot after playing the game with both robots under high error-rate condition. On the contrary, Husky was perceived as more trustworthy than Pepper when it was depicted as featuring a low error-rate. Our results are interesting and call further investigation of the impact of physical anthropomorphism in combination with variable error-rates of the robot.
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