High-Resolution Mapping of Redwood (<i>Sequoia sempervirens</i>) Distributions in Three Californian Forests

High-resolution maps of redwood distributions could enable strategic land management to satisfy diverse conservation goals, but the currently-available maps of redwood distributions are low in spatial resolution and biotic detail. Classification of airborne imaging spectroscopy data provides a poten...

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Main Authors: Emily J. Francis, Gregory P. Asner
Format: Article
Language:English
Published: MDPI AG 2019-02-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/11/3/351
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spelling doaj-18eb3ccb89fc478b87ca71b474505b772020-11-25T01:13:39ZengMDPI AGRemote Sensing2072-42922019-02-0111335110.3390/rs11030351rs11030351High-Resolution Mapping of Redwood (<i>Sequoia sempervirens</i>) Distributions in Three Californian ForestsEmily J. Francis0Gregory P. Asner1Department of Earth System Science, Stanford University, Stanford, CA 94305, USACenter for Global Discovery and Conservation Science, Arizona State University, Tempe, AZ 85281, USAHigh-resolution maps of redwood distributions could enable strategic land management to satisfy diverse conservation goals, but the currently-available maps of redwood distributions are low in spatial resolution and biotic detail. Classification of airborne imaging spectroscopy data provides a potential avenue for mapping redwoods over large areas and with high confidence. We used airborne imaging spectroscopy data collected over three redwood forests by the Carnegie Airborne Observatory, in combination with field training data and application of a gradient boosted regression tree (GBRT) machine learning algorithm, to map the distribution of redwoods at 2-m spatial resolution. Training data collected from the three sites showed that redwoods have spectral signatures distinct from the other common tree species found in redwood forests. We optimized a gradient boosted regression model for high performance and computational efficiency, and the resulting model was demonstrably accurate (81&#8315;98% true positive rate and 90&#8315;98% overall accuracy) in mapping redwoods in each of the study sites. The resulting maps showed marked variation in redwood abundance (0&#8315;70%) within a 1 square kilometer aggregation block, which match the spatial resolution of currently-available redwood distribution maps. Our resulting high-resolution mapping approach will facilitate improved research, conservation, and management of redwood trees in California.https://www.mdpi.com/2072-4292/11/3/351Carnegie Airborne Observatorytree species classificationcoastal redwoodgradient boosted regressionCARThyperspectral imagery
collection DOAJ
language English
format Article
sources DOAJ
author Emily J. Francis
Gregory P. Asner
spellingShingle Emily J. Francis
Gregory P. Asner
High-Resolution Mapping of Redwood (<i>Sequoia sempervirens</i>) Distributions in Three Californian Forests
Remote Sensing
Carnegie Airborne Observatory
tree species classification
coastal redwood
gradient boosted regression
CART
hyperspectral imagery
author_facet Emily J. Francis
Gregory P. Asner
author_sort Emily J. Francis
title High-Resolution Mapping of Redwood (<i>Sequoia sempervirens</i>) Distributions in Three Californian Forests
title_short High-Resolution Mapping of Redwood (<i>Sequoia sempervirens</i>) Distributions in Three Californian Forests
title_full High-Resolution Mapping of Redwood (<i>Sequoia sempervirens</i>) Distributions in Three Californian Forests
title_fullStr High-Resolution Mapping of Redwood (<i>Sequoia sempervirens</i>) Distributions in Three Californian Forests
title_full_unstemmed High-Resolution Mapping of Redwood (<i>Sequoia sempervirens</i>) Distributions in Three Californian Forests
title_sort high-resolution mapping of redwood (<i>sequoia sempervirens</i>) distributions in three californian forests
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2019-02-01
description High-resolution maps of redwood distributions could enable strategic land management to satisfy diverse conservation goals, but the currently-available maps of redwood distributions are low in spatial resolution and biotic detail. Classification of airborne imaging spectroscopy data provides a potential avenue for mapping redwoods over large areas and with high confidence. We used airborne imaging spectroscopy data collected over three redwood forests by the Carnegie Airborne Observatory, in combination with field training data and application of a gradient boosted regression tree (GBRT) machine learning algorithm, to map the distribution of redwoods at 2-m spatial resolution. Training data collected from the three sites showed that redwoods have spectral signatures distinct from the other common tree species found in redwood forests. We optimized a gradient boosted regression model for high performance and computational efficiency, and the resulting model was demonstrably accurate (81&#8315;98% true positive rate and 90&#8315;98% overall accuracy) in mapping redwoods in each of the study sites. The resulting maps showed marked variation in redwood abundance (0&#8315;70%) within a 1 square kilometer aggregation block, which match the spatial resolution of currently-available redwood distribution maps. Our resulting high-resolution mapping approach will facilitate improved research, conservation, and management of redwood trees in California.
topic Carnegie Airborne Observatory
tree species classification
coastal redwood
gradient boosted regression
CART
hyperspectral imagery
url https://www.mdpi.com/2072-4292/11/3/351
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AT gregorypasner highresolutionmappingofredwoodisequoiasempervirensidistributionsinthreecalifornianforests
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