Environmental land-cover classification for integrated watershed studies: Cape Bounty, Melville Island, Nunavut

Thematic maps developed from remote sensing data are extremely useful for designing intensive field studies, particularly for large areas that are logistically challenging to access. The integrated watershed studies at the Cape Bounty Arctic Watershed Observatory (CBAWO), Melville Island, Nunavut, r...

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Published in:Arctic Science
Main Authors: Hung, Jacqueline K.Y., Treitz, Paul
Format: Article in Journal/Newspaper
Language:English
Published: Canadian Science Publishing 2020
Subjects:
Online Access:http://dx.doi.org/10.1139/as-2019-0029
https://cdnsciencepub.com/doi/full-xml/10.1139/as-2019-0029
https://cdnsciencepub.com/doi/pdf/10.1139/as-2019-0029
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spelling crcansciencepubl:10.1139/as-2019-0029 2024-09-15T17:49:58+00:00 Environmental land-cover classification for integrated watershed studies: Cape Bounty, Melville Island, Nunavut Hung, Jacqueline K.Y. Treitz, Paul 2020 http://dx.doi.org/10.1139/as-2019-0029 https://cdnsciencepub.com/doi/full-xml/10.1139/as-2019-0029 https://cdnsciencepub.com/doi/pdf/10.1139/as-2019-0029 en eng Canadian Science Publishing http://www.nrcresearchpress.com/page/about/CorporateTextAndDataMining Arctic Science volume 6, issue 4, page 404-422 ISSN 2368-7460 2368-7460 journal-article 2020 crcansciencepubl https://doi.org/10.1139/as-2019-0029 2024-07-18T04:13:30Z Thematic maps developed from remote sensing data are extremely useful for designing intensive field studies, particularly for large areas that are logistically challenging to access. The integrated watershed studies at the Cape Bounty Arctic Watershed Observatory (CBAWO), Melville Island, Nunavut, rely heavily on land cover for establishing sampling locations regardless of the type of research being conducted (e.g., permafrost degradation, greenhouse gas exchange, surface water chemistry, etc.). Here, we present an environmental land-cover classification of the CBAWO that was developed through an iterative process employing parametric and non-parametric classification algorithms applied to WorldView-2 satellite data and topographic variables. The support vector machine classification of eight-band WorldView-2 spectral data and a topographic wetness index produced the highest classification accuracy for eight land-cover classes (overall classification accuracy: 90.7%; Kappa coefficient (κ): 0.89). This analysis also provided a more precise classification scheme, particularly in the context of the relationship between vegetation type and moisture regime. The environmental land-cover classification derived will better inform future integrated studies of the watershed and allow for upscaling of site-level characteristics to the watershed-scale using the updated vegetation classes. Article in Journal/Newspaper Arctic Nunavut permafrost Melville Island Canadian Science Publishing Arctic Science 6 4 404 422
institution Open Polar
collection Canadian Science Publishing
op_collection_id crcansciencepubl
language English
description Thematic maps developed from remote sensing data are extremely useful for designing intensive field studies, particularly for large areas that are logistically challenging to access. The integrated watershed studies at the Cape Bounty Arctic Watershed Observatory (CBAWO), Melville Island, Nunavut, rely heavily on land cover for establishing sampling locations regardless of the type of research being conducted (e.g., permafrost degradation, greenhouse gas exchange, surface water chemistry, etc.). Here, we present an environmental land-cover classification of the CBAWO that was developed through an iterative process employing parametric and non-parametric classification algorithms applied to WorldView-2 satellite data and topographic variables. The support vector machine classification of eight-band WorldView-2 spectral data and a topographic wetness index produced the highest classification accuracy for eight land-cover classes (overall classification accuracy: 90.7%; Kappa coefficient (κ): 0.89). This analysis also provided a more precise classification scheme, particularly in the context of the relationship between vegetation type and moisture regime. The environmental land-cover classification derived will better inform future integrated studies of the watershed and allow for upscaling of site-level characteristics to the watershed-scale using the updated vegetation classes.
format Article in Journal/Newspaper
author Hung, Jacqueline K.Y.
Treitz, Paul
spellingShingle Hung, Jacqueline K.Y.
Treitz, Paul
Environmental land-cover classification for integrated watershed studies: Cape Bounty, Melville Island, Nunavut
author_facet Hung, Jacqueline K.Y.
Treitz, Paul
author_sort Hung, Jacqueline K.Y.
title Environmental land-cover classification for integrated watershed studies: Cape Bounty, Melville Island, Nunavut
title_short Environmental land-cover classification for integrated watershed studies: Cape Bounty, Melville Island, Nunavut
title_full Environmental land-cover classification for integrated watershed studies: Cape Bounty, Melville Island, Nunavut
title_fullStr Environmental land-cover classification for integrated watershed studies: Cape Bounty, Melville Island, Nunavut
title_full_unstemmed Environmental land-cover classification for integrated watershed studies: Cape Bounty, Melville Island, Nunavut
title_sort environmental land-cover classification for integrated watershed studies: cape bounty, melville island, nunavut
publisher Canadian Science Publishing
publishDate 2020
url http://dx.doi.org/10.1139/as-2019-0029
https://cdnsciencepub.com/doi/full-xml/10.1139/as-2019-0029
https://cdnsciencepub.com/doi/pdf/10.1139/as-2019-0029
genre Arctic
Nunavut
permafrost
Melville Island
genre_facet Arctic
Nunavut
permafrost
Melville Island
op_source Arctic Science
volume 6, issue 4, page 404-422
ISSN 2368-7460 2368-7460
op_rights http://www.nrcresearchpress.com/page/about/CorporateTextAndDataMining
op_doi https://doi.org/10.1139/as-2019-0029
container_title Arctic Science
container_volume 6
container_issue 4
container_start_page 404
op_container_end_page 422
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