Realising the potential of data driven sea ice retrieval methods from SAR

The remoteness and environmental hostility of the Arctic and Antarctic regions greatly impact polar remote sensing research, because high-resolution ground measurements are sparse and have only limited tempo-spatial validity. In the case of sea ice class retrieval from space-borne synthetic aperture...

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Main Authors: Kortum, Karl, Singha, Suman, Spreen, Gunnar
Format: Conference Object
Language:unknown
Published: 2023
Subjects:
Online Access:https://elib.dlr.de/194173/
https://www.igsoc.org/wp-content/uploads/2023/06/procabstracts_80.html#A4041
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author Kortum, Karl
Singha, Suman
Spreen, Gunnar
author_facet Kortum, Karl
Singha, Suman
Spreen, Gunnar
author_sort Kortum, Karl
collection Unknown
description The remoteness and environmental hostility of the Arctic and Antarctic regions greatly impact polar remote sensing research, because high-resolution ground measurements are sparse and have only limited tempo-spatial validity. In the case of sea ice class retrieval from space-borne synthetic aperture radar (SAR), research thus becomes heavily reliant on human annotated datasets. Due to the limited time that a human observer can spend on a scene and the difficulty of labelling sea ice from the backscatter alone, these annotations suffer from a range of drawbacks. Real (measured) ground truth data will likely not become readily available for a large range of SAR acquisitions at high resolution and coverage. Thus, it is difficult to realize the potential of data driven algorithms: To become increasingly more proficient with the influx of more reference data. The only way to build such retrieval algorithms is to be independent of additional data sources which are not readily available. This implies that (high-resolution) ice classification is not a task that can reap the benefits of data-driven algorithms, as added data in the form of high-resolution labels is required but not available. However, we can use local incidence angle dependence of sea ice backscatter as a proxy for ice class labels: Using physics informed networks enables learning such incidence angle dependencies without any additional data but the SAR imagery. This allows for a sustainable sea ice retrieval method, that circumvents a majority of shortcomings originating from the lack of readily available ground truth and is truly able to improve with the SAR data alone.
format Conference Object
genre Antarc*
Antarctic
Arctic
Sea ice
genre_facet Antarc*
Antarctic
Arctic
Sea ice
geographic Arctic
Antarctic
geographic_facet Arctic
Antarctic
id ftdlr:oai:elib.dlr.de:194173
institution Open Polar
language unknown
op_collection_id ftdlr
op_relation Kortum, Karl und Singha, Suman und Spreen, Gunnar (2023) Realising the potential of data driven sea ice retrieval methods from SAR. International Symposium on Sea Ice 2023, 2023-06-04 - 2023-06-09, Bremerhaven, Germany.
publishDate 2023
record_format openpolar
spelling ftdlr:oai:elib.dlr.de:194173 2025-06-15T14:08:12+00:00 Realising the potential of data driven sea ice retrieval methods from SAR Kortum, Karl Singha, Suman Spreen, Gunnar 2023-06-08 https://elib.dlr.de/194173/ https://www.igsoc.org/wp-content/uploads/2023/06/procabstracts_80.html#A4041 unknown Kortum, Karl und Singha, Suman und Spreen, Gunnar (2023) Realising the potential of data driven sea ice retrieval methods from SAR. International Symposium on Sea Ice 2023, 2023-06-04 - 2023-06-09, Bremerhaven, Germany. SAR-Signalverarbeitung Konferenzbeitrag NonPeerReviewed 2023 ftdlr 2025-06-04T04:58:05Z The remoteness and environmental hostility of the Arctic and Antarctic regions greatly impact polar remote sensing research, because high-resolution ground measurements are sparse and have only limited tempo-spatial validity. In the case of sea ice class retrieval from space-borne synthetic aperture radar (SAR), research thus becomes heavily reliant on human annotated datasets. Due to the limited time that a human observer can spend on a scene and the difficulty of labelling sea ice from the backscatter alone, these annotations suffer from a range of drawbacks. Real (measured) ground truth data will likely not become readily available for a large range of SAR acquisitions at high resolution and coverage. Thus, it is difficult to realize the potential of data driven algorithms: To become increasingly more proficient with the influx of more reference data. The only way to build such retrieval algorithms is to be independent of additional data sources which are not readily available. This implies that (high-resolution) ice classification is not a task that can reap the benefits of data-driven algorithms, as added data in the form of high-resolution labels is required but not available. However, we can use local incidence angle dependence of sea ice backscatter as a proxy for ice class labels: Using physics informed networks enables learning such incidence angle dependencies without any additional data but the SAR imagery. This allows for a sustainable sea ice retrieval method, that circumvents a majority of shortcomings originating from the lack of readily available ground truth and is truly able to improve with the SAR data alone. Conference Object Antarc* Antarctic Arctic Sea ice Unknown Arctic Antarctic
spellingShingle SAR-Signalverarbeitung
Kortum, Karl
Singha, Suman
Spreen, Gunnar
Realising the potential of data driven sea ice retrieval methods from SAR
title Realising the potential of data driven sea ice retrieval methods from SAR
title_full Realising the potential of data driven sea ice retrieval methods from SAR
title_fullStr Realising the potential of data driven sea ice retrieval methods from SAR
title_full_unstemmed Realising the potential of data driven sea ice retrieval methods from SAR
title_short Realising the potential of data driven sea ice retrieval methods from SAR
title_sort realising the potential of data driven sea ice retrieval methods from sar
topic SAR-Signalverarbeitung
topic_facet SAR-Signalverarbeitung
url https://elib.dlr.de/194173/
https://www.igsoc.org/wp-content/uploads/2023/06/procabstracts_80.html#A4041