Mapping Regional Distribution of a Single Tree Species: Whitebark Pine in the Greater Yellowstone Ecosystem
Moderate resolution satellite imagery traditionally has been thought to be inadequate for mapping vegetation at the species level. This has made comprehensive mapping of regional distributions of sensitive species, such as whitebark pine, either impractical or extremely time consuming. We sought to...
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2008-08-01
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Online Access: | http://www.mdpi.com/1424-8220/8/8/4983/ |
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doaj-dfd25fd698a74497a49b2783e4d1024f2020-11-24T21:47:10ZengMDPI AGSensors1424-82202008-08-018849834994Mapping Regional Distribution of a Single Tree Species: Whitebark Pine in the Greater Yellowstone EcosystemCharles C. SchwartzShannon PodruznyRick L. LawrenceLisa LandenburgerModerate resolution satellite imagery traditionally has been thought to be inadequate for mapping vegetation at the species level. This has made comprehensive mapping of regional distributions of sensitive species, such as whitebark pine, either impractical or extremely time consuming. We sought to determine whether using a combination of moderate resolution satellite imagery (Landsat Enhanced Thematic Mapper Plus), extensive stand data collected by land management agencies for other purposes, and modern statistical classification techniques (boosted classification trees) could result in successful mapping of whitebark pine. Overall classification accuracies exceeded 90%, with similar individual class accuracies. Accuracies on a localized basis varied based on elevation. Accuracies also varied among administrative units, although we were not able to determine whether these differences related to inherent spatial variations or differences in the quality of available reference data.http://www.mdpi.com/1424-8220/8/8/4983/Remote sensingLandsatYellowstoneSee5classification treesboosting |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Charles C. Schwartz Shannon Podruzny Rick L. Lawrence Lisa Landenburger |
spellingShingle |
Charles C. Schwartz Shannon Podruzny Rick L. Lawrence Lisa Landenburger Mapping Regional Distribution of a Single Tree Species: Whitebark Pine in the Greater Yellowstone Ecosystem Sensors Remote sensing Landsat Yellowstone See5 classification trees boosting |
author_facet |
Charles C. Schwartz Shannon Podruzny Rick L. Lawrence Lisa Landenburger |
author_sort |
Charles C. Schwartz |
title |
Mapping Regional Distribution of a Single Tree Species: Whitebark Pine in the Greater Yellowstone Ecosystem |
title_short |
Mapping Regional Distribution of a Single Tree Species: Whitebark Pine in the Greater Yellowstone Ecosystem |
title_full |
Mapping Regional Distribution of a Single Tree Species: Whitebark Pine in the Greater Yellowstone Ecosystem |
title_fullStr |
Mapping Regional Distribution of a Single Tree Species: Whitebark Pine in the Greater Yellowstone Ecosystem |
title_full_unstemmed |
Mapping Regional Distribution of a Single Tree Species: Whitebark Pine in the Greater Yellowstone Ecosystem |
title_sort |
mapping regional distribution of a single tree species: whitebark pine in the greater yellowstone ecosystem |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2008-08-01 |
description |
Moderate resolution satellite imagery traditionally has been thought to be inadequate for mapping vegetation at the species level. This has made comprehensive mapping of regional distributions of sensitive species, such as whitebark pine, either impractical or extremely time consuming. We sought to determine whether using a combination of moderate resolution satellite imagery (Landsat Enhanced Thematic Mapper Plus), extensive stand data collected by land management agencies for other purposes, and modern statistical classification techniques (boosted classification trees) could result in successful mapping of whitebark pine. Overall classification accuracies exceeded 90%, with similar individual class accuracies. Accuracies on a localized basis varied based on elevation. Accuracies also varied among administrative units, although we were not able to determine whether these differences related to inherent spatial variations or differences in the quality of available reference data. |
topic |
Remote sensing Landsat Yellowstone See5 classification trees boosting |
url |
http://www.mdpi.com/1424-8220/8/8/4983/ |
work_keys_str_mv |
AT charlescschwartz mappingregionaldistributionofasingletreespecieswhitebarkpineinthegreateryellowstoneecosystem AT shannonpodruzny mappingregionaldistributionofasingletreespecieswhitebarkpineinthegreateryellowstoneecosystem AT rickllawrence mappingregionaldistributionofasingletreespecieswhitebarkpineinthegreateryellowstoneecosystem AT lisalandenburger mappingregionaldistributionofasingletreespecieswhitebarkpineinthegreateryellowstoneecosystem |
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