Choosing a Camera for 3D Mapping
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Keywords

Unmanned aerial vehicles, Sensor, 3D map, Mapping, Cartography

How to Cite

Mykhailo Akopov, Svitlana Maksymova, & Vladyslav Yevsieiev. (2023). Choosing a Camera for 3D Mapping. Journal of Universal Science Research, 1(11), 28–38. Retrieved from https://universalpublishings.com/index.php/jusr/article/view/2486

Abstract

This paper examines the problem of three-dimensional mapping of space.. Creating 3D maps is an extremely urgent task. This is often done through mapping using a UAV. However, in order to create a technical map, it is necessary to select suitable sensors. This article provides an overview of sensors that can be used to create such maps. A pair of cameras has been selected, as well as a means of communication between them.

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DOI

References

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