Classification of Sea Ice Types in Sentinel-1 SAR images

A new Sentinel-1 image-based sea ice classification algorithm is proposed to support automated ice charting. Previous studies mostly rely on manual work in selecting training and validation data. We show that the use of readily available ice charts from an operational ice services allow to automate...

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Main Authors: Park, Jeong-Won, Korosov, Anton A., Babiker, Mohamed, Won, Joong-Sun, Hansen, Morten W., Kim, Hyun-Cheol
Format: Text
Language:English
Published: 2019
Subjects:
Online Access:https://doi.org/10.5194/tc-2019-127
https://tc.copernicus.org/preprints/tc-2019-127/
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spelling ftcopernicus:oai:publications.copernicus.org:tcd76904 2023-05-15T15:39:05+02:00 Classification of Sea Ice Types in Sentinel-1 SAR images Park, Jeong-Won Korosov, Anton A. Babiker, Mohamed Won, Joong-Sun Hansen, Morten W. Kim, Hyun-Cheol 2019-06-11 application/pdf https://doi.org/10.5194/tc-2019-127 https://tc.copernicus.org/preprints/tc-2019-127/ eng eng doi:10.5194/tc-2019-127 https://tc.copernicus.org/preprints/tc-2019-127/ eISSN: 1994-0424 Text 2019 ftcopernicus https://doi.org/10.5194/tc-2019-127 2020-07-20T16:22:48Z A new Sentinel-1 image-based sea ice classification algorithm is proposed to support automated ice charting. Previous studies mostly rely on manual work in selecting training and validation data. We show that the use of readily available ice charts from an operational ice services allow to automate selection of large amount of training/testing data void of biased, subjective decisions. The proposed scheme has two phases: training and operational. Both phases start from removal of thermal, scalloping and textural noise from Sentinel-1 data and calculation of gray level co-occurrence matrix and Haralick texture features in a sliding window. In the training phase, the weekly ice charts are reprojected into the SAR image geometry. A random forest classifier is trained with the texture features on input and labels from the rasterized ice charts on output. Then the trained classifier is directly applied to the texture features from Sentinel-1 images in operational manner. Test results from two winter season dataset acquired over the Fram Strait and Barents Sea area showed that the classifier is capable of retrieving 3 generalized cover types (ice free, integrated first-year ice, old ice) with overall accuracies of 85 % and 5 cover types (ice free, new ice, young ice, first-year ice, old ice) with accuracy of 58 %. The errors are attributed both to incorrect manual classification on the ice charts and to the automated algorithm. We demonstrate the potential for near-real time service of ice type classification through an example of ice maps made from daily mosaiced images. Text Barents Sea Fram Strait Sea ice Copernicus Publications: E-Journals Barents Sea
institution Open Polar
collection Copernicus Publications: E-Journals
op_collection_id ftcopernicus
language English
description A new Sentinel-1 image-based sea ice classification algorithm is proposed to support automated ice charting. Previous studies mostly rely on manual work in selecting training and validation data. We show that the use of readily available ice charts from an operational ice services allow to automate selection of large amount of training/testing data void of biased, subjective decisions. The proposed scheme has two phases: training and operational. Both phases start from removal of thermal, scalloping and textural noise from Sentinel-1 data and calculation of gray level co-occurrence matrix and Haralick texture features in a sliding window. In the training phase, the weekly ice charts are reprojected into the SAR image geometry. A random forest classifier is trained with the texture features on input and labels from the rasterized ice charts on output. Then the trained classifier is directly applied to the texture features from Sentinel-1 images in operational manner. Test results from two winter season dataset acquired over the Fram Strait and Barents Sea area showed that the classifier is capable of retrieving 3 generalized cover types (ice free, integrated first-year ice, old ice) with overall accuracies of 85 % and 5 cover types (ice free, new ice, young ice, first-year ice, old ice) with accuracy of 58 %. The errors are attributed both to incorrect manual classification on the ice charts and to the automated algorithm. We demonstrate the potential for near-real time service of ice type classification through an example of ice maps made from daily mosaiced images.
format Text
author Park, Jeong-Won
Korosov, Anton A.
Babiker, Mohamed
Won, Joong-Sun
Hansen, Morten W.
Kim, Hyun-Cheol
spellingShingle Park, Jeong-Won
Korosov, Anton A.
Babiker, Mohamed
Won, Joong-Sun
Hansen, Morten W.
Kim, Hyun-Cheol
Classification of Sea Ice Types in Sentinel-1 SAR images
author_facet Park, Jeong-Won
Korosov, Anton A.
Babiker, Mohamed
Won, Joong-Sun
Hansen, Morten W.
Kim, Hyun-Cheol
author_sort Park, Jeong-Won
title Classification of Sea Ice Types in Sentinel-1 SAR images
title_short Classification of Sea Ice Types in Sentinel-1 SAR images
title_full Classification of Sea Ice Types in Sentinel-1 SAR images
title_fullStr Classification of Sea Ice Types in Sentinel-1 SAR images
title_full_unstemmed Classification of Sea Ice Types in Sentinel-1 SAR images
title_sort classification of sea ice types in sentinel-1 sar images
publishDate 2019
url https://doi.org/10.5194/tc-2019-127
https://tc.copernicus.org/preprints/tc-2019-127/
geographic Barents Sea
geographic_facet Barents Sea
genre Barents Sea
Fram Strait
Sea ice
genre_facet Barents Sea
Fram Strait
Sea ice
op_source eISSN: 1994-0424
op_relation doi:10.5194/tc-2019-127
https://tc.copernicus.org/preprints/tc-2019-127/
op_doi https://doi.org/10.5194/tc-2019-127
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