Combining the U-Net model and a Multi-textRG algorithm for fine SAR ice-water classification

Sea ice classification faces challenges due to the similarity among surfaces such as wind-driven open water (OW), smooth thin ice, level first-year ice (FYI), and melted ice surfaces. Previous algorithms combine unsupervised region segmentation and supervised neural networks, yet struggle due to lim...

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Main Authors: Sun, Yan, Wang, Shaoyin, Cheng, Xiao, Li, Teng, Liu, Chong, Ye, Yufang, Zhao, Xi
Format: Article in Journal/Newspaper
Language:English
Published: Copernicus Publications 2024
Subjects:
Online Access:https://doi.org/10.5194/egusphere-2024-1177
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spelling ftnonlinearchiv:oai:noa.gwlb.de:cop_mods_00073283 2024-06-02T08:14:22+00:00 Combining the U-Net model and a Multi-textRG algorithm for fine SAR ice-water classification Sun, Yan Wang, Shaoyin Cheng, Xiao Li, Teng Liu, Chong Ye, Yufang Zhao, Xi 2024-04 electronic https://doi.org/10.5194/egusphere-2024-1177 https://noa.gwlb.de/receive/cop_mods_00073283 https://noa.gwlb.de/servlets/MCRFileNodeServlet/cop_derivate_00071459/egusphere-2024-1177.pdf https://egusphere.copernicus.org/preprints/2024/egusphere-2024-1177/egusphere-2024-1177.pdf eng eng Copernicus Publications https://doi.org/10.5194/egusphere-2024-1177 https://noa.gwlb.de/receive/cop_mods_00073283 https://noa.gwlb.de/servlets/MCRFileNodeServlet/cop_derivate_00071459/egusphere-2024-1177.pdf https://egusphere.copernicus.org/preprints/2024/egusphere-2024-1177/egusphere-2024-1177.pdf https://creativecommons.org/licenses/by/4.0/ uneingeschränkt info:eu-repo/semantics/openAccess article Verlagsveröffentlichung article Text doc-type:article 2024 ftnonlinearchiv https://doi.org/10.5194/egusphere-2024-1177 2024-05-07T02:17:27Z Sea ice classification faces challenges due to the similarity among surfaces such as wind-driven open water (OW), smooth thin ice, level first-year ice (FYI), and melted ice surfaces. Previous algorithms combine unsupervised region segmentation and supervised neural networks, yet struggle due to limited manual labels and inaccurate region segmentation. We propose to adopt a supervised neural network followed by a region segmentation algorithm with experiential knowledge involved to solve the ambiguous recognition question and sample number limitation. Provided by the AI4Arctic competition, the preprocessed GCOM-W1 AMSR2 36.5GHz H polarization and Sentinel-1 SAR EW dual-polarization data, the CIS/DMI ice chart labels, and the pre-trained U-Net CNN model are employed to perform semantic segmentation of ice and water with near-100 % accuracy. Subsequently, within the U-Net semantically segmented ice mask, a multistage pixel-based ice detection algorithm developed on GLCM textures of SAR images and region growing approach, the Multi-textRG algorithm, refines the ice edge details. We validate the results on Landsat-8 and Sentinel-2 optical data yielding an overall accuracy of 83.11 %, low false negative (FN) of 4.03 % indicating underestimated low backscatter ice surfaces and higher false positive (FP) of 12.86 % reflecting their resolution difference along edges. More importantly, we fused the SAR-based ice detection with CIS/DMI ice charts and AMSR2 ASI SIC product obtaining SAR-Chart and SAR-AMSR2 labels, which enhance ice edge depictions and SIC variation contours. Repeating the two-step procedure with the high-precision SIC labels demonstrates the U-Net model's capability to extract detailed ice edges information and stability of the Multi-textRG algorithm. The U-Net model trained on SAR-AMSR2 label achieves the highest R2-score of 91.993 %, the largest OWrecall (recall of OW) of 99.268 %, and large ov40recall (recall of ice with over-40 % SIC) of 99.207 %. Our algorithm framework solves the accurate ice-water ... Article in Journal/Newspaper Sea ice Niedersächsisches Online-Archiv NOA
institution Open Polar
collection Niedersächsisches Online-Archiv NOA
op_collection_id ftnonlinearchiv
language English
topic article
Verlagsveröffentlichung
spellingShingle article
Verlagsveröffentlichung
Sun, Yan
Wang, Shaoyin
Cheng, Xiao
Li, Teng
Liu, Chong
Ye, Yufang
Zhao, Xi
Combining the U-Net model and a Multi-textRG algorithm for fine SAR ice-water classification
topic_facet article
Verlagsveröffentlichung
description Sea ice classification faces challenges due to the similarity among surfaces such as wind-driven open water (OW), smooth thin ice, level first-year ice (FYI), and melted ice surfaces. Previous algorithms combine unsupervised region segmentation and supervised neural networks, yet struggle due to limited manual labels and inaccurate region segmentation. We propose to adopt a supervised neural network followed by a region segmentation algorithm with experiential knowledge involved to solve the ambiguous recognition question and sample number limitation. Provided by the AI4Arctic competition, the preprocessed GCOM-W1 AMSR2 36.5GHz H polarization and Sentinel-1 SAR EW dual-polarization data, the CIS/DMI ice chart labels, and the pre-trained U-Net CNN model are employed to perform semantic segmentation of ice and water with near-100 % accuracy. Subsequently, within the U-Net semantically segmented ice mask, a multistage pixel-based ice detection algorithm developed on GLCM textures of SAR images and region growing approach, the Multi-textRG algorithm, refines the ice edge details. We validate the results on Landsat-8 and Sentinel-2 optical data yielding an overall accuracy of 83.11 %, low false negative (FN) of 4.03 % indicating underestimated low backscatter ice surfaces and higher false positive (FP) of 12.86 % reflecting their resolution difference along edges. More importantly, we fused the SAR-based ice detection with CIS/DMI ice charts and AMSR2 ASI SIC product obtaining SAR-Chart and SAR-AMSR2 labels, which enhance ice edge depictions and SIC variation contours. Repeating the two-step procedure with the high-precision SIC labels demonstrates the U-Net model's capability to extract detailed ice edges information and stability of the Multi-textRG algorithm. The U-Net model trained on SAR-AMSR2 label achieves the highest R2-score of 91.993 %, the largest OWrecall (recall of OW) of 99.268 %, and large ov40recall (recall of ice with over-40 % SIC) of 99.207 %. Our algorithm framework solves the accurate ice-water ...
format Article in Journal/Newspaper
author Sun, Yan
Wang, Shaoyin
Cheng, Xiao
Li, Teng
Liu, Chong
Ye, Yufang
Zhao, Xi
author_facet Sun, Yan
Wang, Shaoyin
Cheng, Xiao
Li, Teng
Liu, Chong
Ye, Yufang
Zhao, Xi
author_sort Sun, Yan
title Combining the U-Net model and a Multi-textRG algorithm for fine SAR ice-water classification
title_short Combining the U-Net model and a Multi-textRG algorithm for fine SAR ice-water classification
title_full Combining the U-Net model and a Multi-textRG algorithm for fine SAR ice-water classification
title_fullStr Combining the U-Net model and a Multi-textRG algorithm for fine SAR ice-water classification
title_full_unstemmed Combining the U-Net model and a Multi-textRG algorithm for fine SAR ice-water classification
title_sort combining the u-net model and a multi-textrg algorithm for fine sar ice-water classification
publisher Copernicus Publications
publishDate 2024
url https://doi.org/10.5194/egusphere-2024-1177
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https://egusphere.copernicus.org/preprints/2024/egusphere-2024-1177/egusphere-2024-1177.pdf
genre Sea ice
genre_facet Sea ice
op_relation https://doi.org/10.5194/egusphere-2024-1177
https://noa.gwlb.de/receive/cop_mods_00073283
https://noa.gwlb.de/servlets/MCRFileNodeServlet/cop_derivate_00071459/egusphere-2024-1177.pdf
https://egusphere.copernicus.org/preprints/2024/egusphere-2024-1177/egusphere-2024-1177.pdf
op_rights https://creativecommons.org/licenses/by/4.0/
uneingeschränkt
info:eu-repo/semantics/openAccess
op_doi https://doi.org/10.5194/egusphere-2024-1177
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