Abstract:
Control of unmanned aerial vehicles is a very active topic in research with
lots of applications ranging from civilian to military. To control a UAV, its attitude
is often controlled using gyroscopes, but to control its position, inertial sensors
together with GPS are often used. However, obtaining accurate current position
is difficult using inertial sensors because of the integration drift. GPS on the
other hand is not functional in indoor applications since it cannot connect to GPS
satellites. Since vision has been proved to be an inexpensive and consistent
source of relative position information, vision-based control is getting more
popular in UAVs recently, but then again, using vision in outdoor applications is
challenging as the target can move fast and out of the vision sensor field of view.
So, in order to keep the target inside the field of view, two algorithms are being
developed and tested via simulation in this research. Using pan/tilt/zoom
cameras or multi camera systems, the target is guaranteed to stay in vision
system field of view and hence, the vision based pose estimation can provide
the control system with proper relative position. Two case studies - vision-based
mobile-target tracking of a quadrotor using a multi-camera vision sensor and
vision-based mobile-target tracking of a tilting rotor aircraft equipped with a
zooming camera - are presented in this research to show the applicability of
these methods in UAV control.
Description:
A Thesis Submitted to the Faculty of Graduate Studies and Research In Partial Fulfillment of the Requirements for the Degree of Master of Applied Science in Industrial Systems Engineering, University of Regina. xvii, 115 p.