ACCURACY OF DETERMINING THE COORDINATES OF LOCATION POINTS ACCORDING TO IMAGES OBTAINED FROM UAV

Land Cover Mapping & UAV

Authors

First and Last Name Academic degree E-mail Affiliation
Volodymyr Hlotov Sc.D. volodymyr.m.hlotov [at] lpnu.ua Lviv Polytechnic National University
Lviv, Ukraine
Mykhailo Fys Sc.D. mykhailo.m.fys [at] lpnu.ua Lviv Polytechnic National University
Lviv, Ukraine
Alla Hunina No alla.v.hunina [at] lpnu.ua Lviv Polytechnic National University
Lviv, Ukraine

I and my co-authors (if any) authorize the use of the Paper in accordance with the Creative Commons CC BY license

First published on this website: 27.08.2023 - 16:11
Abstract 

One of the main requirements for an aerial surveying UAV is to maintain the minimum angles of inclination of the external orientation of the images. And so, the idea arose to find the correlation coefficients between them when modeling the angles of inclination α and ω relative to the fixed angle ϰ (since this angle is actually compensated with the help of an aero device). So, if there is such a dependence, then based on the values of these values, it is possible to introduce a correction in the design of a micro-UAV and thereby increase stability during horizontal flight. To implement the given task, that is, to determine the values of correlation dependencies between the angular elements of the external orientation of digital images, the authors proposed and conducted an experiment using an electronic total station, a non-metric camera and a control-measuring grid (CMG). As a result, CMG images were obtained at angles of inclination α and ω from -5° to 5°. 135 control points and 9 reference points were measured on each image. After that, external orientation is made for each picture according to the proposed algorithm.

Keywords 
References 

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