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Peek into the `White-Box': A Field Study on Bystander Engagement with Urban Robot Uncertainty

1 March 2025
Xinyan Yu
Marius Hoggenmueller
Tram Thi Minh Tran
Yiyuan Wang
Qiuming Zhang
M. Tomitsch
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Abstract

Uncertainty inherently exists in the autonomous decision-making process of robots. Involving humans in resolving this uncertainty not only helps robots mitigate it but is also crucial for improving human-robot interactions. However, in public urban spaces filled with unpredictability, robots often face heightened uncertainty without direct human collaborators. This study investigates how robots can engage bystanders for assistance in public spaces when encountering uncertainty and examines how these interactions impact bystanders' perceptions and attitudes towards robots. We designed and tested a speculative `peephole' concept that engages bystanders in resolving urban robot uncertainty. Our design is guided by considerations of non-intrusiveness and eliciting initiative in an implicit manner, considering bystanders' unique role as non-obligated participants in relation to urban robots. Drawing from field study findings, we highlight the potential of involving bystanders to mitigate urban robots' technological imperfections to both address operational challenges and foster public acceptance of urban robots. Furthermore, we offer design implications to encourage bystanders' involvement in mitigating the imperfections.

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@article{yu2025_2503.00337,
  title={ Peek into the `White-Box': A Field Study on Bystander Engagement with Urban Robot Uncertainty },
  author={ Xinyan Yu and Marius Hoggenmueller and Tram Thi Minh Tran and Yiyuan Wang and Qiuming Zhang and Martin Tomitsch },
  journal={arXiv preprint arXiv:2503.00337},
  year={ 2025 }
}
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