Data di Pubblicazione:
2022
Abstract:
Future networks of unmanned aerial vehicles (UAVs)
will be tasked to carry out ever-increasing complex operations
that are time-critical and that require accurate localization
performance, such as tracking the position of a malicious user.
Since there is the need to preserve low UAV complexity while
tackling the challenging goals of missions in effective ways, one
key aspect is the UAV intelligence (UAV-I). The UAV's intelligence
includes the UAV's capability to process information and make
decisions, e.g., to decide where to sense and whether to delegate
some tasks to other network entities. This paper overviews some
existing signal processing techniques for distributed estimation
and autonomous navigation of UAVs of low complexity. To this
end, we show some of the needs of the UAVs for running efficient
localization operations for time-limited missions, performed
either as a team or individually. Further, we focus on different
network configurations, which possibly include assistance with
edge computing. We also discuss open problems and future
perspectives for these settings.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Inference engine; Localization; Policy learning; Unmanned aerial vehicles
Elenco autori:
Guidi, Francesco; Guerra, Anna
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