Design of an effective platform for unmanned aerial vehicles to collect research material in the form of aerial photographs

This thesis presents the process of designing and manufacturing an unmanned aerial vehicle in purpose of collecting research materials in the form of photos from air. Priority of the project was to analyze the available materials and manufacture a low-weight construction, using appropriate electronic components, so that the flight time on a single battery charge was as long as possible. An important aspect was also the reduction of manual operating - automatic flight by use of marked geographical coordinates and automatic shutter-release of camera in very specific points. All of these has been analyzed to verify the assumptions.

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