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High-resolution orthophoto map and digital surface models of the largest Argentine Islands (the Antarctic) from unmanned aerial vehicle photogrammetry

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posted on 2020-04-08, 03:43 authored by Kristaps Lamsters, Jānis Karušs, Māris Krievāns, Jurijs Ješkins

This study presents the first high-resolution orthophoto maps and digital surface models (DSMs) of the largest Argentine Islands, West Antarctica. Aerial surveys with small unmanned aerial vehicle (UAV) were performed in Austral summer, 2018, taking 10,041 aerial photographs. Accuracy requirements were ensured using ground control points (GCPs). A resolution of 3.4 and 6.8 cm/px of orthomosaics and DSMs is reached on average, and the RMS reprojection error is 0.22 m on average. We report the morphometric parameters of surveyed islands and discuss issues related to accuracy and the usage of UAVs in polar conditions. This study demonstrates that small and low cost UAVs can be successfully used in harsh polar conditions to obtain accurate orthomosaics and DSMs of mainly glaciated terrain. We provide all generated materials in full resolution available in a scientific data repository that could be used for the monitoring of ice cap changes, vegetation cover, and wildlife populations.

Funding

This work was supported by the performance-based funding of University of Latvia within the ‘Climate change and sustainable use of natural resources’ and by the specific support objective activity 1.1.1.2. ‘Post-doctoral Research Aid’ (Project id. 1.1.1.2/16/I/001) of the Republic of Latvia, funded by the European Regional Development Fund, Kristaps Lamsters research Project No. 1.1.1.2/VIAA/1/16/118. The expedition to Antarctica was partially financed also by the donation of Mikrotik (administered by the University of Latvia Foundation) and company ‘Ceļu būvniecības sabiedrība “Igate”’ Ltd (IGATE).

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