Prevention and Resolution of Conflicts in Social Navigation -- a Survey
- URL: http://arxiv.org/abs/2106.12113v1
- Date: Wed, 23 Jun 2021 01:10:22 GMT
- Title: Prevention and Resolution of Conflicts in Social Navigation -- a Survey
- Authors: Reuth Mirsky and Xuesu Xiao and Justin Hart and Peter Stone
- Abstract summary: Recent developments in robotics have encountered and tackled some of the challenges of navigating in mixed human-robot environments.
Many of the relevant papers are not comparable and there is no standard vocabulary between the researchers.
This paper propose some future directions and problems that are currently in the frontier of social navigation to help focus research efforts.
- Score: 39.89946101238849
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: With the approaching goal of having robots collaborate in shared human-robot
environments, navigation in this context becomes both crucial and desirable.
Recent developments in robotics have encountered and tackled some of the
challenges of navigating in mixed human-robot environments, and in recent years
we observe a surge of related work that specifically targets the question of
how to handle conflicts between agents in social navigation. These
contributions offer models, algorithms, and evaluation metrics, however as this
research area is inherently interdisciplinary, many of the relevant papers are
not comparable and there is no standard vocabulary between the researchers.
The main goal of this survey is to bridge this gap by proposing such a common
language, using it to survey existing work, and highlighting open problems. It
starts by defining a conflict in social navigation, and offers a detailed
taxonomy of its components. This survey then maps existing work while
discussing papers using the framing of the proposed taxonomy. Finally, this
paper propose some future directions and problems that are currently in the
frontier of social navigation to help focus research efforts.
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