SAR Deep Learning Sea Ice Retrieval Trained with Airborne Laser Scanner Measurements from the MOSAiC Expedition
Automated sea ice charting from Synthetic Aperture Radar (SAR) has been researched for more than a decade and still, we are not close to unlocking the full potential of automated solutions in terms of resolution and accuracy. The central complications arise from ground truth data not being readily a...
Main Authors: | , , , , , |
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Format: | Article in Journal/Newspaper |
Language: | English |
Published: |
Copernicus Publications
2024
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Subjects: | |
Online Access: | https://elib.dlr.de/202267/ https://doi.org/10.5194/tc-18-2207-2024 https://doi.org/10.5194/tc-2020-64 |
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author | Kortum, Karl Singha, Suman Spreen, Gunnar Hutter, Nils Jutila, Arttu Haas, Christian |
author_facet | Kortum, Karl Singha, Suman Spreen, Gunnar Hutter, Nils Jutila, Arttu Haas, Christian |
author_sort | Kortum, Karl |
collection | Unknown |
description | Automated sea ice charting from Synthetic Aperture Radar (SAR) has been researched for more than a decade and still, we are not close to unlocking the full potential of automated solutions in terms of resolution and accuracy. The central complications arise from ground truth data not being readily available in the polar regions. In this paper, we build a dataset from 20 near coincident X-Band SAR acquisitions and as many Airborne Laser Scanner (ALS) measurements from the Multidisciplinary drifting Observatory for the Study of Arctic Climate (MOSAiC), between October and May. This dataset is then used to assess the accuracy and robustness of five machine learning based approaches, by deriving classes from the freeboard, surface roughness (standard deviation at 0.5 m correlation length) and reflectance. It is shown that there is only a weak correllation of the radar backscatter and the sea ice topography. Accuracies between 40 % and 69 % percent and robustnesses between 68 % and 85 % give a realistic insight into modern classifiers' performance across a range of ice conditions over 8 months. It also marks the first time algorithms are trained entirely with labels from coincident measurements, allowing for a probabilistic class retrieval. The results show that segmentation models able to learn from the class distribution significantly perform pixel-wise classification approaches. |
format | Article in Journal/Newspaper |
genre | Arctic Sea ice The Cryosphere |
genre_facet | Arctic Sea ice The Cryosphere |
geographic | Arctic |
geographic_facet | Arctic |
id | ftdlr:oai:elib.dlr.de:202267 |
institution | Open Polar |
language | English |
op_collection_id | ftdlr |
op_doi | https://doi.org/10.5194/tc-18-2207-202410.5194/tc-2020-64 |
op_relation | https://elib.dlr.de/202267/1/tc-18-2207-2024_KK.pdf Kortum, Karl und Singha, Suman und Spreen, Gunnar und Hutter, Nils und Jutila, Arttu und Haas, Christian (2024) SAR Deep Learning Sea Ice Retrieval Trained with Airborne Laser Scanner Measurements from the MOSAiC Expedition. The Cryosphere, 18 (5), Seiten 2207-2222. Copernicus Publications. doi:10.5194/tc-18-2207-2024 <https://doi.org/10.5194/tc-18-2207-2024>. ISSN 1994-0416. |
op_rights | cc_by |
publishDate | 2024 |
publisher | Copernicus Publications |
record_format | openpolar |
spelling | ftdlr:oai:elib.dlr.de:202267 2025-06-15T14:21:48+00:00 SAR Deep Learning Sea Ice Retrieval Trained with Airborne Laser Scanner Measurements from the MOSAiC Expedition Kortum, Karl Singha, Suman Spreen, Gunnar Hutter, Nils Jutila, Arttu Haas, Christian 2024-05-03 application/pdf https://elib.dlr.de/202267/ https://doi.org/10.5194/tc-18-2207-2024 https://doi.org/10.5194/tc-2020-64 en eng Copernicus Publications https://elib.dlr.de/202267/1/tc-18-2207-2024_KK.pdf Kortum, Karl und Singha, Suman und Spreen, Gunnar und Hutter, Nils und Jutila, Arttu und Haas, Christian (2024) SAR Deep Learning Sea Ice Retrieval Trained with Airborne Laser Scanner Measurements from the MOSAiC Expedition. The Cryosphere, 18 (5), Seiten 2207-2222. Copernicus Publications. doi:10.5194/tc-18-2207-2024 <https://doi.org/10.5194/tc-18-2207-2024>. ISSN 1994-0416. cc_by SAR-Signalverarbeitung Zeitschriftenbeitrag PeerReviewed 2024 ftdlr https://doi.org/10.5194/tc-18-2207-202410.5194/tc-2020-64 2025-06-04T04:58:10Z Automated sea ice charting from Synthetic Aperture Radar (SAR) has been researched for more than a decade and still, we are not close to unlocking the full potential of automated solutions in terms of resolution and accuracy. The central complications arise from ground truth data not being readily available in the polar regions. In this paper, we build a dataset from 20 near coincident X-Band SAR acquisitions and as many Airborne Laser Scanner (ALS) measurements from the Multidisciplinary drifting Observatory for the Study of Arctic Climate (MOSAiC), between October and May. This dataset is then used to assess the accuracy and robustness of five machine learning based approaches, by deriving classes from the freeboard, surface roughness (standard deviation at 0.5 m correlation length) and reflectance. It is shown that there is only a weak correllation of the radar backscatter and the sea ice topography. Accuracies between 40 % and 69 % percent and robustnesses between 68 % and 85 % give a realistic insight into modern classifiers' performance across a range of ice conditions over 8 months. It also marks the first time algorithms are trained entirely with labels from coincident measurements, allowing for a probabilistic class retrieval. The results show that segmentation models able to learn from the class distribution significantly perform pixel-wise classification approaches. Article in Journal/Newspaper Arctic Sea ice The Cryosphere Unknown Arctic |
spellingShingle | SAR-Signalverarbeitung Kortum, Karl Singha, Suman Spreen, Gunnar Hutter, Nils Jutila, Arttu Haas, Christian SAR Deep Learning Sea Ice Retrieval Trained with Airborne Laser Scanner Measurements from the MOSAiC Expedition |
title | SAR Deep Learning Sea Ice Retrieval Trained with Airborne Laser Scanner Measurements from the MOSAiC Expedition |
title_full | SAR Deep Learning Sea Ice Retrieval Trained with Airborne Laser Scanner Measurements from the MOSAiC Expedition |
title_fullStr | SAR Deep Learning Sea Ice Retrieval Trained with Airborne Laser Scanner Measurements from the MOSAiC Expedition |
title_full_unstemmed | SAR Deep Learning Sea Ice Retrieval Trained with Airborne Laser Scanner Measurements from the MOSAiC Expedition |
title_short | SAR Deep Learning Sea Ice Retrieval Trained with Airborne Laser Scanner Measurements from the MOSAiC Expedition |
title_sort | sar deep learning sea ice retrieval trained with airborne laser scanner measurements from the mosaic expedition |
topic | SAR-Signalverarbeitung |
topic_facet | SAR-Signalverarbeitung |
url | https://elib.dlr.de/202267/ https://doi.org/10.5194/tc-18-2207-2024 https://doi.org/10.5194/tc-2020-64 |