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Vision-Aided Inertial Navigation for Flight Control
Author(s) -
Allen Wu,
Eric N. Johnson,
Alison A. Proctor
Publication year - 2005
Publication title -
journal of aerospace computing information and communication
Language(s) - English
Resource type - Journals
eISSN - 1940-3151
pISSN - 1542-9423
DOI - 10.2514/1.16038
Subject(s) - inertial navigation system , aeronautics , aerospace engineering , air navigation , computer science , inertial frame of reference , wind triangle , inertial measurement unit , computer vision , artificial intelligence , engineering , global positioning system , physics , mobile robot , classical mechanics , telecommunications , robot , robot control
Many onboard navigation systems use the Global Positioning System to bound the errors that result from integrating inertial sensors over time. Global Positioning System information, however, is not always accessible since it relies on external satellite signals. To this end, a vision sensor is explored as an alternative for inertial navigation in the context of an Extended Kalman Filter used in the closed-loop control of an unmanned aerial vehicle. The filter employs an onboard image processor that uses camera images to provide information about the size and position of a known target, thereby allowing the flight computer to derive the target's pose. Assuming that the position and orientation of the target are known a priori, vehicle position and attitude can be determined from the fusion of this information with inertial and heading measurements. Simulation and flight test results verify filter performance in the closed-loop control of an unmanned rotorcraft.

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