Mapping of Glaciers on Horseshoe Island, Antarctic Peninsula, with Deep Learning Based on High-Resolution Orthophoto

Author:

Selbesoğlu Mahmut Oğuz1ORCID,Bakirman Tolga2ORCID,Vassilev Oleg3ORCID,Ozsoy Burcu4

Affiliation:

1. Department of Geomatics, Istanbul Technical University, 34469 Istanbul, Türkiye

2. Department of Geomatics, Yildiz Technical University, 34220 Istanbul, Türkiye

3. Bulgarian Antarctic Institute, 15 Tsar Osvoboditel Boulevard, 1504 Sofia, Bulgaria

4. Polar Research Institute, TÜBİTAK Marmara Research Center, 41470 Kocaeli, Türkiye

Abstract

Antarctica plays a key role in the hydrological cycle of the Earth’s climate system, with an ice sheet that is the largest block of ice that reserves Earth’s 90% of total ice volume and 70% of fresh water. Furthermore, the sustainability of the region is an important concern due to the challenges posed by melting glaciers that preserve the Earth’s heat balance by interacting with the Southern Ocean. Therefore, the monitoring of glaciers based on advanced deep learning approaches offers vital outcomes that are of great importance in revealing the effects of global warming. In this study, recent deep learning approaches were investigated in terms of their accuracy for the segmentation of glacier landforms in the Antarctic Peninsula. For this purpose, high-resolution orthophotos were generated based on UAV photogrammetry within the Sixth Turkish Antarctic Expedition in 2022. Segformer, DeepLabv3+ and K-Net deep learning methods were comparatively analyzed in terms of their accuracy. The results showed that K-Net provided efficient results with 99.62% accuracy, 99.58% intersection over union, 99.82% precision, 99.76% recall and 99.79% F1-score. Visual inspections also revealed that K-Net was able to preserve the fine details around the edges of the glaciers. Our proposed deep-learning-based method provides an accurate and sustainable solution for automatic glacier segmentation and monitoring.

Funder

Scientific and Technological Research Council of Turkey

TÜBİTAK project under the 1001 program

Publisher

MDPI AG

Subject

Artificial Intelligence,Computer Science Applications,Aerospace Engineering,Information Systems,Control and Systems Engineering

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5. Lucieer, A., Robinson, S.A., and Turner, D. (2011, January 10–15). Unmanned aerial vehicle (UAV) remote sensing for hyperspatial terrain mapping of Antarctic moss beds based on structure from motion (SfM) point clouds. Proceedings of the 34th International Symposium on Remote Sensing of Environment, Sydney, Australia.

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