Collaborative Multi-Robot Systems for Search and Rescue: Coordination
and Perception
- URL: http://arxiv.org/abs/2008.12610v1
- Date: Fri, 28 Aug 2020 12:28:32 GMT
- Title: Collaborative Multi-Robot Systems for Search and Rescue: Coordination
and Perception
- Authors: Jorge Pe\~na Queralta, Jussi Taipalmaa, Bilge Can Pullinen, Victor
Kathan Sarker, Tuan Nguyen Gia, Hannu Tenhunen, Moncef Gabbouj, Jenni
Raitoharju, Tomi Westerlund
- Abstract summary: Multi-robot systems have the potential to significantly improve the efficiency of search and rescue personnel.
In this paper, we review and analyze the existing approaches to multi-robot SAR support.
We put these algorithms in the context of the different challenges and constraints that various types of robots encounter in different SAR environments.
- Score: 16.850204497272205
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Autonomous or teleoperated robots have been playing increasingly important
roles in civil applications in recent years. Across the different civil domains
where robots can support human operators, one of the areas where they can have
more impact is in search and rescue (SAR) operations. In particular,
multi-robot systems have the potential to significantly improve the efficiency
of SAR personnel with faster search of victims, initial assessment and mapping
of the environment, real-time monitoring and surveillance of SAR operations, or
establishing emergency communication networks, among other possibilities. SAR
operations encompass a wide variety of environments and situations, and
therefore heterogeneous and collaborative multi-robot systems can provide the
most advantages. In this paper, we review and analyze the existing approaches
to multi-robot SAR support, from an algorithmic perspective and putting an
emphasis on the methods enabling collaboration among the robots as well as
advanced perception through machine vision and multi-agent active perception.
Furthermore, we put these algorithms in the context of the different challenges
and constraints that various types of robots (ground, aerial, surface or
underwater) encounter in different SAR environments (maritime, urban,
wilderness or other post-disaster scenarios). This is, to the best of our
knowledge, the first review considering heterogeneous SAR robots across
different environments, while giving two complimentary points of view: control
mechanisms and machine perception. Based on our review of the state-of-the-art,
we discuss the main open research questions, and outline our insights on the
current approaches that have potential to improve the real-world performance of
multi-robot SAR systems.
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