Task-Oriented Wireless Communications for Collaborative Perception in Intelligent Unmanned Systems
Collaborative Perception (CP) has shown great potential to achieve more holistic and reliable environmental perception in intelligent unmanned systems (IUSs). However, implementing CP still faces key challenges due to the characteristics of the CP task and the dynamics of wireless channels. In this...
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Zusammenfassung: | Collaborative Perception (CP) has shown great potential to achieve more
holistic and reliable environmental perception in intelligent unmanned systems
(IUSs). However, implementing CP still faces key challenges due to the
characteristics of the CP task and the dynamics of wireless channels. In this
article, a task-oriented wireless communication framework is proposed to
jointly optimize the communication scheme and the CP procedure. We first
propose channel-adaptive compression and robust fusion approaches to extract
and exploit the most valuable semantic information under wireless communication
constraints. We then propose a task-oriented distributed scheduling algorithm
to identify the best collaborators for CP under dynamic environments. The main
idea is learning while scheduling, where the collaboration utility is
effectively learned with low computation and communication overhead. Case
studies are carried out in connected autonomous driving scenarios to verify the
proposed framework. Finally, we identify several future research directions. |
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DOI: | 10.48550/arxiv.2406.03086 |