Ready-To-Train AI4Arctic Sea Ice Challenge Dataset ...
The AI4Arctic Sea Ice Challenge Datasets are produced for the AI4EO sea ice competition initiated by the European Space Agency (ESA) ɸ-lab. The purpose of the competition is to develop deep learning models to automatically produce sea ice charts including sea ice concentration, stage-of-development...
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Technical University of Denmark
2022
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Online Access: | https://dx.doi.org/10.11583/dtu.21316608.v1 https://data.dtu.dk/articles/dataset/Ready-To-Train_AI4Arctic_Sea_Ice_Challenge_Dataset/21316608/1 |
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ftdatacite:10.11583/dtu.21316608.v1 2023-08-27T04:09:46+02:00 Ready-To-Train AI4Arctic Sea Ice Challenge Dataset ... Buus-Hinkler, Jørgen Wulf, Tore Stokholm, Andreas Rønne Korosov, Anton Saldo, Roberto Pedersen, Leif Toudal Arthurs, David Solberg, Rune Longépé, Nicolas Kreiner, Matilde Brandt 2022 https://dx.doi.org/10.11583/dtu.21316608.v1 https://data.dtu.dk/articles/dataset/Ready-To-Train_AI4Arctic_Sea_Ice_Challenge_Dataset/21316608/1 unknown Technical University of Denmark https://dx.doi.org/10.11583/dtu.21316608 Creative Commons Attribution 4.0 International https://creativecommons.org/licenses/by/4.0/legalcode cc-by-4.0 Other earth sciences not elsewhere classified dataset Dataset 2022 ftdatacite https://doi.org/10.11583/dtu.21316608.v110.11583/dtu.21316608 2023-08-07T14:24:23Z The AI4Arctic Sea Ice Challenge Datasets are produced for the AI4EO sea ice competition initiated by the European Space Agency (ESA) ɸ-lab. The purpose of the competition is to develop deep learning models to automatically produce sea ice charts including sea ice concentration, stage-of-development and floe size (form) information. The training datasets contain Sentinel-1 active microwave Synthetic Aperture Radar (SAR) data and corresponding passive MicroWave Radiometer (MWR) data from the AMSR2 satellite sensor. While SAR data has ambiguities between open water and sea ice, it has a high spatial resolution, whereas MWR data has good contrast between open water and ice. However, the coarse resolution of the AMSR2 MWR observations introduces a new set of obstacles, e.g. land spill-over, which can lead to erroneous sea ice predictions along the coastline adjacent to open water. Label data in the challenge datasets are ice charts, that have been produced by the Greenland ice service at the Danish Meteorological ... Dataset Greenland Sea ice DataCite Metadata Store (German National Library of Science and Technology) Greenland |
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Open Polar |
collection |
DataCite Metadata Store (German National Library of Science and Technology) |
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ftdatacite |
language |
unknown |
topic |
Other earth sciences not elsewhere classified |
spellingShingle |
Other earth sciences not elsewhere classified Buus-Hinkler, Jørgen Wulf, Tore Stokholm, Andreas Rønne Korosov, Anton Saldo, Roberto Pedersen, Leif Toudal Arthurs, David Solberg, Rune Longépé, Nicolas Kreiner, Matilde Brandt Ready-To-Train AI4Arctic Sea Ice Challenge Dataset ... |
topic_facet |
Other earth sciences not elsewhere classified |
description |
The AI4Arctic Sea Ice Challenge Datasets are produced for the AI4EO sea ice competition initiated by the European Space Agency (ESA) ɸ-lab. The purpose of the competition is to develop deep learning models to automatically produce sea ice charts including sea ice concentration, stage-of-development and floe size (form) information. The training datasets contain Sentinel-1 active microwave Synthetic Aperture Radar (SAR) data and corresponding passive MicroWave Radiometer (MWR) data from the AMSR2 satellite sensor. While SAR data has ambiguities between open water and sea ice, it has a high spatial resolution, whereas MWR data has good contrast between open water and ice. However, the coarse resolution of the AMSR2 MWR observations introduces a new set of obstacles, e.g. land spill-over, which can lead to erroneous sea ice predictions along the coastline adjacent to open water. Label data in the challenge datasets are ice charts, that have been produced by the Greenland ice service at the Danish Meteorological ... |
format |
Dataset |
author |
Buus-Hinkler, Jørgen Wulf, Tore Stokholm, Andreas Rønne Korosov, Anton Saldo, Roberto Pedersen, Leif Toudal Arthurs, David Solberg, Rune Longépé, Nicolas Kreiner, Matilde Brandt |
author_facet |
Buus-Hinkler, Jørgen Wulf, Tore Stokholm, Andreas Rønne Korosov, Anton Saldo, Roberto Pedersen, Leif Toudal Arthurs, David Solberg, Rune Longépé, Nicolas Kreiner, Matilde Brandt |
author_sort |
Buus-Hinkler, Jørgen |
title |
Ready-To-Train AI4Arctic Sea Ice Challenge Dataset ... |
title_short |
Ready-To-Train AI4Arctic Sea Ice Challenge Dataset ... |
title_full |
Ready-To-Train AI4Arctic Sea Ice Challenge Dataset ... |
title_fullStr |
Ready-To-Train AI4Arctic Sea Ice Challenge Dataset ... |
title_full_unstemmed |
Ready-To-Train AI4Arctic Sea Ice Challenge Dataset ... |
title_sort |
ready-to-train ai4arctic sea ice challenge dataset ... |
publisher |
Technical University of Denmark |
publishDate |
2022 |
url |
https://dx.doi.org/10.11583/dtu.21316608.v1 https://data.dtu.dk/articles/dataset/Ready-To-Train_AI4Arctic_Sea_Ice_Challenge_Dataset/21316608/1 |
geographic |
Greenland |
geographic_facet |
Greenland |
genre |
Greenland Sea ice |
genre_facet |
Greenland Sea ice |
op_relation |
https://dx.doi.org/10.11583/dtu.21316608 |
op_rights |
Creative Commons Attribution 4.0 International https://creativecommons.org/licenses/by/4.0/legalcode cc-by-4.0 |
op_doi |
https://doi.org/10.11583/dtu.21316608.v110.11583/dtu.21316608 |
_version_ |
1775351342876852224 |