Affiliation:
1. Georgia Institute of Technology, Atlanta, GA
Abstract
As robots become increasingly prevalent in human environments, there will inevitably be times when the robot needs to interrupt a human to initiate an interaction. Our work introduces the first interruptibility-aware mobile-robot system, which uses social and contextual cues online to accurately determine when to interrupt a person. We evaluate multiple non-temporal and temporal models on the interruptibility classification task, and show that a variant of Conditional Random Fields (CRFs), the Latent-Dynamic CRF, is the most robust, accurate, and appropriate model for use on our system. Additionally, we evaluate different classification features and show that the observed demeanor of a person can help in interruptibility classification; but in the presence of detection noise, robust detection of object labels as a visual cue to the interruption context can improve interruptibility estimates. Finally, we deploy our system in a large-scale user study to understand the effects of interruptibility-awareness on human-task performance, robot-task performance, and on human interpretation of the robot’s social aptitude. Our results show that while participants are able to maintain task performance, even in the presence of interruptions, interruptibility-awareness improves the robot’s task performance and improves participant social perceptions of the robot.
Funder
Early Career Faculty
NASA's Space Technology Research Grants Program
Publisher
Association for Computing Machinery (ACM)
Subject
Artificial Intelligence,Human-Computer Interaction
Reference70 articles.
1. If not now, when?
2. Memory for goals: An activation-based model;Altmann Erik M.;Cognitive Science,2002
3. Siddhartha Banerjee Andrew Silva Karen Feigh and Sonia Chernova. 2018. Effects of interruptibility-aware robot behavior. arXiv Preprint arXiv:1804.06383 (2018). Siddhartha Banerjee Andrew Silva Karen Feigh and Sonia Chernova. 2018. Effects of interruptibility-aware robot behavior. arXiv Preprint arXiv:1804.06383 (2018).
4. Yoav Benjamini and Yosef Hochberg. 1995. Controlling the false discovery rate: A practical and powerful approach to multiple testing. Journal of the Royal Statistical Society. Series B (Methodological) (1995) 289--300. Yoav Benjamini and Yosef Hochberg. 1995. Controlling the false discovery rate: A practical and powerful approach to multiple testing. Journal of the Royal Statistical Society. Series B (Methodological) (1995) 289--300.
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