Mutual Relative Localization in Heterogeneous Air-ground Robot Teams
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Date
2022
Journal Title
Journal ISSN
Volume Title
Publisher
Science and Technology Publications, Lda
Abstract
Air and ground robots with distinct sensing characteristics can be combined in a team to accomplish demanding tasks robustly. A key challenge in such heterogeneous systems is the design of a local positioning methodology where each robot estimates its location with respect to its neighbors. We propose a filtering-based relative localization algorithm for air-ground teams composed of vertical-take-off-and-landing drones and unmanned aerial vehicles. The team members interact through a sensing/communication mechanism relying on onboard units, which results in a mutual connection between the air and ground components. Exploiting the supplementary features of omnidirectional distance sensors and monocular cameras, the framework can function in all environments without fixed infrastructures. Various simulation and experiment results verify the competency of our approach.
Description
Keywords
Bayesian Filtering, Heterogeneous Multi-robot Systems, Relative Localization
Turkish CoHE Thesis Center URL
Citation
WoS Q
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Source
Volume
1
Issue
Start Page
304
End Page
312