Planning In Information Space For A Quadrotor Helicopter In A Gps-Denied Environment

ICRA(2008)

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摘要
This paper describes a motion planning algorithm for a quadrotor helicopter flying autonomously without GPS. Without accurate global positioning, the vehicle's ability to locatize itself varies across the envir-omnent, since different environmental features provide different degrees of localization. If the vehicle plans a path without regard to how well it can localize itself along that path, it runs the risk of becoming lost.We use the BeHef Roadinap (BRM) algorithm [1], an information-space extension of the Probabilistic Roadmap algorithm, to plan vehicle trajectories that incorporate sensing. We show that the original BRM can be extended to use the Unscented Kalman Filter (UKF), and describe a sampling algorithm that minimizes the number of samples required to find a good path. Finally, we demonstrate the BRM pathplanning algorithm on the helicopter, navigating in an indoor environment with a laser range-finder.
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关键词
Kalman filters,helicopters,path planning,GPS-denied environment,belief roadmap algorithm,global positioning,information space,localization degree,motion planning,probabilistic roadmap algorithm,quadrotor helicopter,unscented Kalman filter,
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