A parallel multilevel data decomposition algorithm for orientation estimation of unmanned aerial vehicles
Date
2014
Journal Title
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Publisher
Springer-Verlag Berlin Heidelberg
Abstract
Fast orientation estimation of unmanned aerial vehicles is
important for maintain stable flight as well as to perform more complex
task like obstacle avoidance, search, mapping, etc. The orientation estimation can be performed by means of the fusion of differentsensors like
accelerometers, gyroscopes and magnetometers, however magnetometers
suffer from high distortion in indoor flights, therefore information from
cameras can be used as a replacement. This article presents a multilevel
decomposition method to process images sent from an unmanned aerial
vehicle to a ground station composed by an heterogeneous set of desktop
computers. The multilevel decomposition is performed using an alter native hierarchy called Master/Taskmaster/Slaves in order to minimize
the network latency. Results shows that using this hierarchy the speed
of traditional Master/Slave can be doubled
Description
Keywords
orientation estimation, unmanned aerial vehicles, high per-formance computing
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