An adaptive machine learning approach to improve automatic iceberg detection from SAR images

Iceberg distribution, dispersion and melting patterns are fundamental aspects in the balance of heat and freshwater in the Southern Ocean; yet these features are not fully understood. This lack of understanding is, in part, due to the difficulties in accurately identifying icebergs in different envi...

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Published in:ISPRS Journal of Photogrammetry and Remote Sensing
Main Authors: Barbat, Mauro M., Wesche, Christine, Werhli, Adriano V., Mata, Mauricio M.
Format: Article in Journal/Newspaper
Language:unknown
Published: ELSEVIER SCIENCE BV 2019
Subjects:
Online Access:https://epic.awi.de/id/eprint/50044/
https://hdl.handle.net/10013/epic.330c26cf-dc9e-47fc-a4c9-3b255ed21fcc
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spelling ftawi:oai:epic.awi.de:50044 2024-09-15T17:42:54+00:00 An adaptive machine learning approach to improve automatic iceberg detection from SAR images Barbat, Mauro M. Wesche, Christine Werhli, Adriano V. Mata, Mauricio M. 2019-08 https://epic.awi.de/id/eprint/50044/ https://hdl.handle.net/10013/epic.330c26cf-dc9e-47fc-a4c9-3b255ed21fcc unknown ELSEVIER SCIENCE BV Barbat, M. M. , Wesche, C. orcid:0000-0002-9786-4010 , Werhli, A. V. and Mata, M. M. (2019) An adaptive machine learning approach to improve automatic iceberg detection from SAR images , ISPRS Journal of Photogrammetry and Remote Sensing, 156 (1), pp. 247-259 . doi:10.1016/j.isprsjprs.2019.08.015 <https://doi.org/10.1016/j.isprsjprs.2019.08.015> , hdl:10013/epic.330c26cf-dc9e-47fc-a4c9-3b255ed21fcc EPIC3ISPRS Journal of Photogrammetry and Remote Sensing, ELSEVIER SCIENCE BV, 156(1), pp. 247-259, ISSN: 0924-2716 Article isiRev 2019 ftawi https://doi.org/10.1016/j.isprsjprs.2019.08.015 2024-06-24T04:22:11Z Iceberg distribution, dispersion and melting patterns are fundamental aspects in the balance of heat and freshwater in the Southern Ocean; yet these features are not fully understood. This lack of understanding is, in part, due to the difficulties in accurately identifying icebergs in different environmental conditions. To improve the understanding, reliable iceberg detection tools are necessary to achieve a detailed picture of iceberg drift and disintegration patterns, an thus to gain further information on the freshwater input into the Southern Ocean. Here, we present an accurate automatic large-scale iceberg detection method using an alternative machine learning architecture applied to high resolution Synthetic Aperture Radar (SAR) images. Our method is based on the concept of adaptability and focuses on improving the performance of identifying icebergs in ambiguous environmental contexts with wide radiometric, textural, size and shape variability. The fundamentals of the method are centred on superpixel segmentation, ensemble learning and incremental learning. The method is applied to a dataset containing 586 ENVISAT Advanced SAR images acquired during 2003–2005 (Weddell Sea region) and to the Radarsat-1 Antarctic Mapping Project (RAMP) mosaic, covering the Antarctic wide near-coastal zone. These images cover scenes under heterogenous backscattering signatures for all seasons with variable meteorological, oceanographic and acquisition parameters (e.g. band, polarization). Our method is highly adaptable to distinguish icebergs from ambiguous objects hidden in the images. The average false positive rate and miss rate are 2.3 ± 0.4% and 3.3 ± 0.4%, respectively. Overall, 9512 icebergs with sizes varying from 0.1 to 4567.82 km2 are detected with average classification accuracy of 97.5 ± 0.6%. The results confirm that the method presented here is robust for widespread iceberg detection in the Antarctic seas. Article in Journal/Newspaper Antarc* Antarctic Iceberg* Southern Ocean Weddell Sea Alfred Wegener Institute for Polar- and Marine Research (AWI): ePIC (electronic Publication Information Center) ISPRS Journal of Photogrammetry and Remote Sensing 156 247 259
institution Open Polar
collection Alfred Wegener Institute for Polar- and Marine Research (AWI): ePIC (electronic Publication Information Center)
op_collection_id ftawi
language unknown
description Iceberg distribution, dispersion and melting patterns are fundamental aspects in the balance of heat and freshwater in the Southern Ocean; yet these features are not fully understood. This lack of understanding is, in part, due to the difficulties in accurately identifying icebergs in different environmental conditions. To improve the understanding, reliable iceberg detection tools are necessary to achieve a detailed picture of iceberg drift and disintegration patterns, an thus to gain further information on the freshwater input into the Southern Ocean. Here, we present an accurate automatic large-scale iceberg detection method using an alternative machine learning architecture applied to high resolution Synthetic Aperture Radar (SAR) images. Our method is based on the concept of adaptability and focuses on improving the performance of identifying icebergs in ambiguous environmental contexts with wide radiometric, textural, size and shape variability. The fundamentals of the method are centred on superpixel segmentation, ensemble learning and incremental learning. The method is applied to a dataset containing 586 ENVISAT Advanced SAR images acquired during 2003–2005 (Weddell Sea region) and to the Radarsat-1 Antarctic Mapping Project (RAMP) mosaic, covering the Antarctic wide near-coastal zone. These images cover scenes under heterogenous backscattering signatures for all seasons with variable meteorological, oceanographic and acquisition parameters (e.g. band, polarization). Our method is highly adaptable to distinguish icebergs from ambiguous objects hidden in the images. The average false positive rate and miss rate are 2.3 ± 0.4% and 3.3 ± 0.4%, respectively. Overall, 9512 icebergs with sizes varying from 0.1 to 4567.82 km2 are detected with average classification accuracy of 97.5 ± 0.6%. The results confirm that the method presented here is robust for widespread iceberg detection in the Antarctic seas.
format Article in Journal/Newspaper
author Barbat, Mauro M.
Wesche, Christine
Werhli, Adriano V.
Mata, Mauricio M.
spellingShingle Barbat, Mauro M.
Wesche, Christine
Werhli, Adriano V.
Mata, Mauricio M.
An adaptive machine learning approach to improve automatic iceberg detection from SAR images
author_facet Barbat, Mauro M.
Wesche, Christine
Werhli, Adriano V.
Mata, Mauricio M.
author_sort Barbat, Mauro M.
title An adaptive machine learning approach to improve automatic iceberg detection from SAR images
title_short An adaptive machine learning approach to improve automatic iceberg detection from SAR images
title_full An adaptive machine learning approach to improve automatic iceberg detection from SAR images
title_fullStr An adaptive machine learning approach to improve automatic iceberg detection from SAR images
title_full_unstemmed An adaptive machine learning approach to improve automatic iceberg detection from SAR images
title_sort adaptive machine learning approach to improve automatic iceberg detection from sar images
publisher ELSEVIER SCIENCE BV
publishDate 2019
url https://epic.awi.de/id/eprint/50044/
https://hdl.handle.net/10013/epic.330c26cf-dc9e-47fc-a4c9-3b255ed21fcc
genre Antarc*
Antarctic
Iceberg*
Southern Ocean
Weddell Sea
genre_facet Antarc*
Antarctic
Iceberg*
Southern Ocean
Weddell Sea
op_source EPIC3ISPRS Journal of Photogrammetry and Remote Sensing, ELSEVIER SCIENCE BV, 156(1), pp. 247-259, ISSN: 0924-2716
op_relation Barbat, M. M. , Wesche, C. orcid:0000-0002-9786-4010 , Werhli, A. V. and Mata, M. M. (2019) An adaptive machine learning approach to improve automatic iceberg detection from SAR images , ISPRS Journal of Photogrammetry and Remote Sensing, 156 (1), pp. 247-259 . doi:10.1016/j.isprsjprs.2019.08.015 <https://doi.org/10.1016/j.isprsjprs.2019.08.015> , hdl:10013/epic.330c26cf-dc9e-47fc-a4c9-3b255ed21fcc
op_doi https://doi.org/10.1016/j.isprsjprs.2019.08.015
container_title ISPRS Journal of Photogrammetry and Remote Sensing
container_volume 156
container_start_page 247
op_container_end_page 259
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