Vision-based State Estimation of an Unmanned Aerial Vehicle
Author(s) -
Lee Kian Seng,
Mark Ovinis,
Nagarajan,
Ralph Seulin,
Olivier Morel
Publication year - 2016
Publication title -
trends in bioinformatics
Language(s) - English
Resource type - Journals
eISSN - 2077-2254
pISSN - 1994-7941
DOI - 10.3923/tb.2017.11.19
Subject(s) - computer vision , artificial intelligence , computer science , global positioning system , homography , pose , orientation (vector space) , state (computer science) , monocular vision , frame (networking) , position (finance) , fiducial marker , mathematics , telecommunications , statistics , geometry , projective test , finance , algorithm , projective space , economics
International audienceBackground and Objective: Unmanned Aerial Vehicles (UAVs) have found widespread use in many applications due to its mobility and maneuverability. An important aspect in controlling the movement of these vehicles is its state estimation. State estimation is especially challenging for indoor applications, where Global Positioning System (GPS) signals are weak and have low accuracy. Methodology: This research proposed a vision based state estimation that is applicable even for indoor use. It is a low cost, low power and reliable state estimation approach using a monocular camera with a series of fiducial markers. When a marker is captured by the camera, its position and orientation with respect to the camera’s coordinate frame is determined based on its homography transformation. The pose of the camera and hence the vehicle, in world coordinate can then be inferred from known markers poses. Results: In this study experimental results showed that the proposed method is suitable for indoor navigation of unmanned aerial vehicles. The reliability of the state estimation was improved by increasing the number of markers captured. Conclusion: The experimental results verified that the vision based state estimation method for indoor UAV navigation a promising solution and had several advantages over traditional other methods
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