Geostatistical and statistical classification of sea-ice properties and provinces from SAR data

Recent drastic reductions in the Arctic sea-ice cover have raised an interest in understanding the role of sea ice in the global system as well as pointed out a need to understand the physical processes that lead to such changes. Satellite remote-sensing data provide important information about remo...

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Published in:Remote Sensing
Main Authors: Herzfeld, Ute C., Williams, Scott, Heinrichs, John, Maslanik, James, Sucht, Steven
Format: Text
Language:unknown
Published: FHSU Scholars Repository 2016
Subjects:
Online Access:https://scholars.fhsu.edu/geo_facpubs/3
https://doi.org/10.3390/rs8080616
https://scholars.fhsu.edu/context/geo_facpubs/article/1002/viewcontent/Herzfeld_etal_2016_Geostatistical_and_statistical_classification.pdf
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spelling ftforthaysstuniv:oai:scholars.fhsu.edu:geo_facpubs-1002 2024-09-15T17:58:14+00:00 Geostatistical and statistical classification of sea-ice properties and provinces from SAR data Herzfeld, Ute C. Williams, Scott Heinrichs, John Maslanik, James Sucht, Steven 2016-01-01T08:00:00Z application/pdf https://scholars.fhsu.edu/geo_facpubs/3 https://doi.org/10.3390/rs8080616 https://scholars.fhsu.edu/context/geo_facpubs/article/1002/viewcontent/Herzfeld_etal_2016_Geostatistical_and_statistical_classification.pdf unknown FHSU Scholars Repository https://scholars.fhsu.edu/geo_facpubs/3 doi:10.3390/rs8080616 https://scholars.fhsu.edu/context/geo_facpubs/article/1002/viewcontent/Herzfeld_etal_2016_Geostatistical_and_statistical_classification.pdf © 2016 by the authors. http://creativecommons.org/licenses/by/4.0/ Geosciences Faculty Publications Beaufort Sea Chukchi Sea Feature vector Geostatistical and statistical classification Point Barrow/Alaska Satellite data Vario function Geology text 2016 ftforthaysstuniv https://doi.org/10.3390/rs8080616 2024-08-15T04:57:44Z Recent drastic reductions in the Arctic sea-ice cover have raised an interest in understanding the role of sea ice in the global system as well as pointed out a need to understand the physical processes that lead to such changes. Satellite remote-sensing data provide important information about remote ice areas, and Synthetic Aperture Radar (SAR) data have the advantages of penetration of the omnipresent cloud cover and of high spatial resolution. A challenge addressed in this paper is how to extract information on sea-ice types and sea-ice processes from SAR data. We introduce, validate and apply geostatistical and statistical approaches to automated classification of sea ice from SAR data, to be used as individual tools for mapping sea-ice properties and provinces or in combination. A key concept of the geostatistical classification method is the analysis of spatial surface structures and their anisotropies, more generally, of spatial surface roughness, at variable, intermediate-sized scales. The geostatistical approach utilizes vario parameters extracted from directional vario functions, the parameters can be mapped or combined into feature vectors for classification. The method is flexible with respect to window sizes and parameter types and detects anisotropies. In two applications to RADARSAT and ERS-2 SAR data from the area near Point Barrow, Alaska, it is demonstrated that vario-parameter maps may be utilized to distinguish regions of different sea-ice characteristics in the Beaufort Sea, the Chukchi Sea and in Elson Lagoon. In a third and a fourth case study the analysis is taken further by utilizing multi-parameter feature vectors as inputs for unsupervised and supervised statistical classification. Field measurements and high-resolution aerial observations serve as basis for validation of the geostatistical-statistical classification methods. A combination of supervised classification and vario-parameter mapping yields best results, correctly identifying several sea-ice provinces in the shore-fast ice ... Text Barrow Beaufort Sea Chukchi Chukchi Sea Point Barrow Sea ice Alaska FHSU Scholars Repository (Fort Hays State University) Remote Sensing 8 8 616
institution Open Polar
collection FHSU Scholars Repository (Fort Hays State University)
op_collection_id ftforthaysstuniv
language unknown
topic Beaufort Sea
Chukchi Sea
Feature vector
Geostatistical and statistical classification
Point Barrow/Alaska
Satellite data
Vario function
Geology
spellingShingle Beaufort Sea
Chukchi Sea
Feature vector
Geostatistical and statistical classification
Point Barrow/Alaska
Satellite data
Vario function
Geology
Herzfeld, Ute C.
Williams, Scott
Heinrichs, John
Maslanik, James
Sucht, Steven
Geostatistical and statistical classification of sea-ice properties and provinces from SAR data
topic_facet Beaufort Sea
Chukchi Sea
Feature vector
Geostatistical and statistical classification
Point Barrow/Alaska
Satellite data
Vario function
Geology
description Recent drastic reductions in the Arctic sea-ice cover have raised an interest in understanding the role of sea ice in the global system as well as pointed out a need to understand the physical processes that lead to such changes. Satellite remote-sensing data provide important information about remote ice areas, and Synthetic Aperture Radar (SAR) data have the advantages of penetration of the omnipresent cloud cover and of high spatial resolution. A challenge addressed in this paper is how to extract information on sea-ice types and sea-ice processes from SAR data. We introduce, validate and apply geostatistical and statistical approaches to automated classification of sea ice from SAR data, to be used as individual tools for mapping sea-ice properties and provinces or in combination. A key concept of the geostatistical classification method is the analysis of spatial surface structures and their anisotropies, more generally, of spatial surface roughness, at variable, intermediate-sized scales. The geostatistical approach utilizes vario parameters extracted from directional vario functions, the parameters can be mapped or combined into feature vectors for classification. The method is flexible with respect to window sizes and parameter types and detects anisotropies. In two applications to RADARSAT and ERS-2 SAR data from the area near Point Barrow, Alaska, it is demonstrated that vario-parameter maps may be utilized to distinguish regions of different sea-ice characteristics in the Beaufort Sea, the Chukchi Sea and in Elson Lagoon. In a third and a fourth case study the analysis is taken further by utilizing multi-parameter feature vectors as inputs for unsupervised and supervised statistical classification. Field measurements and high-resolution aerial observations serve as basis for validation of the geostatistical-statistical classification methods. A combination of supervised classification and vario-parameter mapping yields best results, correctly identifying several sea-ice provinces in the shore-fast ice ...
format Text
author Herzfeld, Ute C.
Williams, Scott
Heinrichs, John
Maslanik, James
Sucht, Steven
author_facet Herzfeld, Ute C.
Williams, Scott
Heinrichs, John
Maslanik, James
Sucht, Steven
author_sort Herzfeld, Ute C.
title Geostatistical and statistical classification of sea-ice properties and provinces from SAR data
title_short Geostatistical and statistical classification of sea-ice properties and provinces from SAR data
title_full Geostatistical and statistical classification of sea-ice properties and provinces from SAR data
title_fullStr Geostatistical and statistical classification of sea-ice properties and provinces from SAR data
title_full_unstemmed Geostatistical and statistical classification of sea-ice properties and provinces from SAR data
title_sort geostatistical and statistical classification of sea-ice properties and provinces from sar data
publisher FHSU Scholars Repository
publishDate 2016
url https://scholars.fhsu.edu/geo_facpubs/3
https://doi.org/10.3390/rs8080616
https://scholars.fhsu.edu/context/geo_facpubs/article/1002/viewcontent/Herzfeld_etal_2016_Geostatistical_and_statistical_classification.pdf
genre Barrow
Beaufort Sea
Chukchi
Chukchi Sea
Point Barrow
Sea ice
Alaska
genre_facet Barrow
Beaufort Sea
Chukchi
Chukchi Sea
Point Barrow
Sea ice
Alaska
op_source Geosciences Faculty Publications
op_relation https://scholars.fhsu.edu/geo_facpubs/3
doi:10.3390/rs8080616
https://scholars.fhsu.edu/context/geo_facpubs/article/1002/viewcontent/Herzfeld_etal_2016_Geostatistical_and_statistical_classification.pdf
op_rights © 2016 by the authors.
http://creativecommons.org/licenses/by/4.0/
op_doi https://doi.org/10.3390/rs8080616
container_title Remote Sensing
container_volume 8
container_issue 8
container_start_page 616
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