Assessing the Potential to Operationalize Shoreline Sensitivity Mapping: Classifying Multiple Wide Fine Quadrature Polarized RADARSAT-2 and Landsat 5 Scenes with a Single Random Forest Model

The Random Forest algorithm was used to classify 86 Wide Fine Quadrature Polarized RADARSAT-2 scenes, five Landsat 5 scenes, and a Digital Elevation Model covering an area approximately 81,000 km2 in size, and representing the entirety of Dease Strait, Coronation Gulf and Bathurst Inlet, Nunavut. Th...

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Published in:Remote Sensing
Main Authors: Sarah Banks, Koreen Millard, Jon Pasher, Murray Richardson, Huili Wang, Jason Duffe
Format: Article in Journal/Newspaper
Language:English
Published: MDPI AG 2015
Subjects:
Q
Online Access:https://doi.org/10.3390/rs71013528
https://doaj.org/article/83e212e4b8d94fec952edfdf5d45b789
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spelling ftdoajarticles:oai:doaj.org/article:83e212e4b8d94fec952edfdf5d45b789 2023-05-15T15:07:35+02:00 Assessing the Potential to Operationalize Shoreline Sensitivity Mapping: Classifying Multiple Wide Fine Quadrature Polarized RADARSAT-2 and Landsat 5 Scenes with a Single Random Forest Model Sarah Banks Koreen Millard Jon Pasher Murray Richardson Huili Wang Jason Duffe 2015-10-01T00:00:00Z https://doi.org/10.3390/rs71013528 https://doaj.org/article/83e212e4b8d94fec952edfdf5d45b789 EN eng MDPI AG http://www.mdpi.com/2072-4292/7/10/13528 https://doaj.org/toc/2072-4292 2072-4292 doi:10.3390/rs71013528 https://doaj.org/article/83e212e4b8d94fec952edfdf5d45b789 Remote Sensing, Vol 7, Iss 10, Pp 13528-13563 (2015) RADARSAT-2 Landsat 5 classification Random Forest Arctic shorelines Science Q article 2015 ftdoajarticles https://doi.org/10.3390/rs71013528 2022-12-31T15:24:12Z The Random Forest algorithm was used to classify 86 Wide Fine Quadrature Polarized RADARSAT-2 scenes, five Landsat 5 scenes, and a Digital Elevation Model covering an area approximately 81,000 km2 in size, and representing the entirety of Dease Strait, Coronation Gulf and Bathurst Inlet, Nunavut. The focus of this research was to assess the potential to operationalize shoreline sensitivity mapping to inform oil spill response and contingency planning. The impact of varying the training sample size and reducing model data load were evaluated. Results showed that acceptable accuracies could be achieved with relatively few training samples, but that higher accuracies and greater probabilities of correct class assignment were observed with larger sample sizes. Additionally, the number of inputs to the model could be greatly reduced without impacting overall performance. Optimized models reached independent accuracies of 91% for seven land cover types, and classification probabilities between 0.77 and 0.98 (values for latter represent per-class averages generated from independent validation sites). Mixed results were observed when assessing the potential for remote predictive mapping by simulating transferability of the model to scenes without training data. Article in Journal/Newspaper Arctic Bathurst Inlet Coronation Gulf Nunavut Directory of Open Access Journals: DOAJ Articles Arctic Nunavut Bathurst Inlet ENVELOPE(-108.051,-108.051,66.840,66.840) Coronation Gulf ENVELOPE(-112.003,-112.003,68.134,68.134) Dease Strait ENVELOPE(-107.502,-107.502,68.834,68.834) Remote Sensing 7 10 13528 13563
institution Open Polar
collection Directory of Open Access Journals: DOAJ Articles
op_collection_id ftdoajarticles
language English
topic RADARSAT-2
Landsat 5
classification
Random Forest
Arctic
shorelines
Science
Q
spellingShingle RADARSAT-2
Landsat 5
classification
Random Forest
Arctic
shorelines
Science
Q
Sarah Banks
Koreen Millard
Jon Pasher
Murray Richardson
Huili Wang
Jason Duffe
Assessing the Potential to Operationalize Shoreline Sensitivity Mapping: Classifying Multiple Wide Fine Quadrature Polarized RADARSAT-2 and Landsat 5 Scenes with a Single Random Forest Model
topic_facet RADARSAT-2
Landsat 5
classification
Random Forest
Arctic
shorelines
Science
Q
description The Random Forest algorithm was used to classify 86 Wide Fine Quadrature Polarized RADARSAT-2 scenes, five Landsat 5 scenes, and a Digital Elevation Model covering an area approximately 81,000 km2 in size, and representing the entirety of Dease Strait, Coronation Gulf and Bathurst Inlet, Nunavut. The focus of this research was to assess the potential to operationalize shoreline sensitivity mapping to inform oil spill response and contingency planning. The impact of varying the training sample size and reducing model data load were evaluated. Results showed that acceptable accuracies could be achieved with relatively few training samples, but that higher accuracies and greater probabilities of correct class assignment were observed with larger sample sizes. Additionally, the number of inputs to the model could be greatly reduced without impacting overall performance. Optimized models reached independent accuracies of 91% for seven land cover types, and classification probabilities between 0.77 and 0.98 (values for latter represent per-class averages generated from independent validation sites). Mixed results were observed when assessing the potential for remote predictive mapping by simulating transferability of the model to scenes without training data.
format Article in Journal/Newspaper
author Sarah Banks
Koreen Millard
Jon Pasher
Murray Richardson
Huili Wang
Jason Duffe
author_facet Sarah Banks
Koreen Millard
Jon Pasher
Murray Richardson
Huili Wang
Jason Duffe
author_sort Sarah Banks
title Assessing the Potential to Operationalize Shoreline Sensitivity Mapping: Classifying Multiple Wide Fine Quadrature Polarized RADARSAT-2 and Landsat 5 Scenes with a Single Random Forest Model
title_short Assessing the Potential to Operationalize Shoreline Sensitivity Mapping: Classifying Multiple Wide Fine Quadrature Polarized RADARSAT-2 and Landsat 5 Scenes with a Single Random Forest Model
title_full Assessing the Potential to Operationalize Shoreline Sensitivity Mapping: Classifying Multiple Wide Fine Quadrature Polarized RADARSAT-2 and Landsat 5 Scenes with a Single Random Forest Model
title_fullStr Assessing the Potential to Operationalize Shoreline Sensitivity Mapping: Classifying Multiple Wide Fine Quadrature Polarized RADARSAT-2 and Landsat 5 Scenes with a Single Random Forest Model
title_full_unstemmed Assessing the Potential to Operationalize Shoreline Sensitivity Mapping: Classifying Multiple Wide Fine Quadrature Polarized RADARSAT-2 and Landsat 5 Scenes with a Single Random Forest Model
title_sort assessing the potential to operationalize shoreline sensitivity mapping: classifying multiple wide fine quadrature polarized radarsat-2 and landsat 5 scenes with a single random forest model
publisher MDPI AG
publishDate 2015
url https://doi.org/10.3390/rs71013528
https://doaj.org/article/83e212e4b8d94fec952edfdf5d45b789
long_lat ENVELOPE(-108.051,-108.051,66.840,66.840)
ENVELOPE(-112.003,-112.003,68.134,68.134)
ENVELOPE(-107.502,-107.502,68.834,68.834)
geographic Arctic
Nunavut
Bathurst Inlet
Coronation Gulf
Dease Strait
geographic_facet Arctic
Nunavut
Bathurst Inlet
Coronation Gulf
Dease Strait
genre Arctic
Bathurst Inlet
Coronation Gulf
Nunavut
genre_facet Arctic
Bathurst Inlet
Coronation Gulf
Nunavut
op_source Remote Sensing, Vol 7, Iss 10, Pp 13528-13563 (2015)
op_relation http://www.mdpi.com/2072-4292/7/10/13528
https://doaj.org/toc/2072-4292
2072-4292
doi:10.3390/rs71013528
https://doaj.org/article/83e212e4b8d94fec952edfdf5d45b789
op_doi https://doi.org/10.3390/rs71013528
container_title Remote Sensing
container_volume 7
container_issue 10
container_start_page 13528
op_container_end_page 13563
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