Mapping sub-antarctic cushion plants using random forests to combine very high resolution satellite imagery and terrain modelling.
Monitoring changes in the distribution and density of plant species often requires accurate and high-resolution baseline maps of those species. Detecting such change at the landscape scale is often problematic, particularly in remote areas. We examine a new technique to improve accuracy and objectiv...
Main Authors: | , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Public Library of Science (PLoS)
2013-01-01
|
Series: | PLoS ONE |
Online Access: | http://europepmc.org/articles/PMC3733920?pdf=render |
id |
doaj-b0f0ed981b4243788cd8ca8cd69452ce |
---|---|
record_format |
Article |
spelling |
doaj-b0f0ed981b4243788cd8ca8cd69452ce2020-11-24T22:00:09ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0188e7209310.1371/journal.pone.0072093Mapping sub-antarctic cushion plants using random forests to combine very high resolution satellite imagery and terrain modelling.Phillippa K BricherArko LucieerJustine ShawAleks TeraudsDana M BergstromMonitoring changes in the distribution and density of plant species often requires accurate and high-resolution baseline maps of those species. Detecting such change at the landscape scale is often problematic, particularly in remote areas. We examine a new technique to improve accuracy and objectivity in mapping vegetation, combining species distribution modelling and satellite image classification on a remote sub-Antarctic island. In this study, we combine spectral data from very high resolution WorldView-2 satellite imagery and terrain variables from a high resolution digital elevation model to improve mapping accuracy, in both pixel- and object-based classifications. Random forest classification was used to explore the effectiveness of these approaches on mapping the distribution of the critically endangered cushion plant Azorella macquariensis Orchard (Apiaceae) on sub-Antarctic Macquarie Island. Both pixel- and object-based classifications of the distribution of Azorella achieved very high overall validation accuracies (91.6-96.3%, κ = 0.849-0.924). Both two-class and three-class classifications were able to accurately and consistently identify the areas where Azorella was absent, indicating that these maps provide a suitable baseline for monitoring expected change in the distribution of the cushion plants. Detecting such change is critical given the threats this species is currently facing under altering environmental conditions. The method presented here has applications to monitoring a range of species, particularly in remote and isolated environments.http://europepmc.org/articles/PMC3733920?pdf=render |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Phillippa K Bricher Arko Lucieer Justine Shaw Aleks Terauds Dana M Bergstrom |
spellingShingle |
Phillippa K Bricher Arko Lucieer Justine Shaw Aleks Terauds Dana M Bergstrom Mapping sub-antarctic cushion plants using random forests to combine very high resolution satellite imagery and terrain modelling. PLoS ONE |
author_facet |
Phillippa K Bricher Arko Lucieer Justine Shaw Aleks Terauds Dana M Bergstrom |
author_sort |
Phillippa K Bricher |
title |
Mapping sub-antarctic cushion plants using random forests to combine very high resolution satellite imagery and terrain modelling. |
title_short |
Mapping sub-antarctic cushion plants using random forests to combine very high resolution satellite imagery and terrain modelling. |
title_full |
Mapping sub-antarctic cushion plants using random forests to combine very high resolution satellite imagery and terrain modelling. |
title_fullStr |
Mapping sub-antarctic cushion plants using random forests to combine very high resolution satellite imagery and terrain modelling. |
title_full_unstemmed |
Mapping sub-antarctic cushion plants using random forests to combine very high resolution satellite imagery and terrain modelling. |
title_sort |
mapping sub-antarctic cushion plants using random forests to combine very high resolution satellite imagery and terrain modelling. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS ONE |
issn |
1932-6203 |
publishDate |
2013-01-01 |
description |
Monitoring changes in the distribution and density of plant species often requires accurate and high-resolution baseline maps of those species. Detecting such change at the landscape scale is often problematic, particularly in remote areas. We examine a new technique to improve accuracy and objectivity in mapping vegetation, combining species distribution modelling and satellite image classification on a remote sub-Antarctic island. In this study, we combine spectral data from very high resolution WorldView-2 satellite imagery and terrain variables from a high resolution digital elevation model to improve mapping accuracy, in both pixel- and object-based classifications. Random forest classification was used to explore the effectiveness of these approaches on mapping the distribution of the critically endangered cushion plant Azorella macquariensis Orchard (Apiaceae) on sub-Antarctic Macquarie Island. Both pixel- and object-based classifications of the distribution of Azorella achieved very high overall validation accuracies (91.6-96.3%, κ = 0.849-0.924). Both two-class and three-class classifications were able to accurately and consistently identify the areas where Azorella was absent, indicating that these maps provide a suitable baseline for monitoring expected change in the distribution of the cushion plants. Detecting such change is critical given the threats this species is currently facing under altering environmental conditions. The method presented here has applications to monitoring a range of species, particularly in remote and isolated environments. |
url |
http://europepmc.org/articles/PMC3733920?pdf=render |
work_keys_str_mv |
AT phillippakbricher mappingsubantarcticcushionplantsusingrandomforeststocombineveryhighresolutionsatelliteimageryandterrainmodelling AT arkolucieer mappingsubantarcticcushionplantsusingrandomforeststocombineveryhighresolutionsatelliteimageryandterrainmodelling AT justineshaw mappingsubantarcticcushionplantsusingrandomforeststocombineveryhighresolutionsatelliteimageryandterrainmodelling AT aleksterauds mappingsubantarcticcushionplantsusingrandomforeststocombineveryhighresolutionsatelliteimageryandterrainmodelling AT danambergstrom mappingsubantarcticcushionplantsusingrandomforeststocombineveryhighresolutionsatelliteimageryandterrainmodelling |
_version_ |
1725845061110857728 |