Texture-based sea ice classification on TerraSAR-X imagery

Sea ice monitoring has attracted growing attention over the last decade due to its importance in global warming. Besides the purely scientific interest, practical implications of global warming are the increased navigability of ice-infested sea passages such as the Arctic Northwestern and Northeaste...

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Bibliographic Details
Main Authors: Ressel, Rudolf, Lehner, Susanne
Format: Conference Object
Language:English
Published: Research Publishing Services, Singapur 2014
Subjects:
Online Access:https://elib.dlr.de/89495/
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author Ressel, Rudolf
Lehner, Susanne
author_facet Ressel, Rudolf
Lehner, Susanne
author_sort Ressel, Rudolf
collection Unknown
description Sea ice monitoring has attracted growing attention over the last decade due to its importance in global warming. Besides the purely scientific interest, practical implications of global warming are the increased navigability of ice-infested sea passages such as the Arctic Northwestern and Northeastern passages. To assist maritime endeavors in these areas, ice type classification is pivotal. National sea ice surveillance services of several countries have provided ice charts on a continuous basis, mostly generated by human experts in a manual fashion. These classifications are based on a variety of data sources, mostly from microwave or optical spaceborne and airborne sources. In this paper we present an approach that relies on TerraSAR-X Satellite data. Such data offers images at a high resolution in a radar band so far very rarely applied for ice classification. In order to build on expert knowledge of the past, we designed an artificial neural network approach, which outputs a number of suitable ice type classes. Input neurons are fed by an automated feature extraction algorithm. These features are based on popular and wellestablished texture analysis methods, most notably graylevel co-occurrence matrices (GLCM) and local binary patterns (LBP). Images are acquired for a selected eographical area for which ground truth data can be obtained from national ice services (Baltic sea). From these datasets, training and validation samples are chosen and evaluated. Classification results are compared with official ice charts. We asses suitability for near real time services. Based on first examples and computed results, we conclude that our approach is rather promising for automatic near real time (NRT) services.
format Conference Object
genre Arctic
Global warming
Sea ice
genre_facet Arctic
Global warming
Sea ice
geographic Arctic
geographic_facet Arctic
id ftdlr:oai:elib.dlr.de:89495
institution Open Polar
language English
op_collection_id ftdlr
op_relation https://elib.dlr.de/89495/1/2014_Ressel_Lehner_ICE14-1243_final.pdf
Ressel, Rudolf und Lehner, Susanne (2014) Texture-based sea ice classification on TerraSAR-X imagery. In: Proceedings of the 22 IAHR International Symposium on ICE 2014 (IAHR-ICE 2014), Seiten 503-509. Research Publishing Services, Singapur. IAHR-ICE 2014, 2014-08-11 - 2014-08-15, Singapur, Singapur. ISBN 978 981 09 0750 1.
publishDate 2014
publisher Research Publishing Services, Singapur
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spelling ftdlr:oai:elib.dlr.de:89495 2025-06-15T14:21:58+00:00 Texture-based sea ice classification on TerraSAR-X imagery Ressel, Rudolf Lehner, Susanne 2014 application/pdf https://elib.dlr.de/89495/ en eng Research Publishing Services, Singapur https://elib.dlr.de/89495/1/2014_Ressel_Lehner_ICE14-1243_final.pdf Ressel, Rudolf und Lehner, Susanne (2014) Texture-based sea ice classification on TerraSAR-X imagery. In: Proceedings of the 22 IAHR International Symposium on ICE 2014 (IAHR-ICE 2014), Seiten 503-509. Research Publishing Services, Singapur. IAHR-ICE 2014, 2014-08-11 - 2014-08-15, Singapur, Singapur. ISBN 978 981 09 0750 1. SAR-Signalverarbeitung Konferenzbeitrag PeerReviewed 2014 ftdlr 2025-06-04T04:58:08Z Sea ice monitoring has attracted growing attention over the last decade due to its importance in global warming. Besides the purely scientific interest, practical implications of global warming are the increased navigability of ice-infested sea passages such as the Arctic Northwestern and Northeastern passages. To assist maritime endeavors in these areas, ice type classification is pivotal. National sea ice surveillance services of several countries have provided ice charts on a continuous basis, mostly generated by human experts in a manual fashion. These classifications are based on a variety of data sources, mostly from microwave or optical spaceborne and airborne sources. In this paper we present an approach that relies on TerraSAR-X Satellite data. Such data offers images at a high resolution in a radar band so far very rarely applied for ice classification. In order to build on expert knowledge of the past, we designed an artificial neural network approach, which outputs a number of suitable ice type classes. Input neurons are fed by an automated feature extraction algorithm. These features are based on popular and wellestablished texture analysis methods, most notably graylevel co-occurrence matrices (GLCM) and local binary patterns (LBP). Images are acquired for a selected eographical area for which ground truth data can be obtained from national ice services (Baltic sea). From these datasets, training and validation samples are chosen and evaluated. Classification results are compared with official ice charts. We asses suitability for near real time services. Based on first examples and computed results, we conclude that our approach is rather promising for automatic near real time (NRT) services. Conference Object Arctic Global warming Sea ice Unknown Arctic
spellingShingle SAR-Signalverarbeitung
Ressel, Rudolf
Lehner, Susanne
Texture-based sea ice classification on TerraSAR-X imagery
title Texture-based sea ice classification on TerraSAR-X imagery
title_full Texture-based sea ice classification on TerraSAR-X imagery
title_fullStr Texture-based sea ice classification on TerraSAR-X imagery
title_full_unstemmed Texture-based sea ice classification on TerraSAR-X imagery
title_short Texture-based sea ice classification on TerraSAR-X imagery
title_sort texture-based sea ice classification on terrasar-x imagery
topic SAR-Signalverarbeitung
topic_facet SAR-Signalverarbeitung
url https://elib.dlr.de/89495/