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https://hdl.handle.net/11000/39060
Determining Subcanopy Psidium cattleianum Invasion in Hawaiian Forests Using Imaging Spectroscopy
Title: Determining Subcanopy Psidium cattleianum Invasion in Hawaiian Forests Using Imaging Spectroscopy |
Authors: Barbosa, Jomar M. Asner, Gregory P. Martin, Roberta E. Baldeck, Claire A. Hughes, Flint Johnson, Tracy |
Editor: MDPI |
Department: Departamentos de la UMH::Biología Aplicada |
Issue Date: 2016 |
URI: https://hdl.handle.net/11000/39060 |
Abstract:
High-resolution airborne imaging spectroscopy represents a promising avenue for mapping
the spread of invasive tree species through native forests, but for this technology to be useful to
forest managers there are two main technical challenges that must be addressed: (1) mapping a
single focal species amongst a diverse array of other tree species; and (2) detecting early outbreaks of
invasive plant species that are often hidden beneath the forest canopy. To address these challenges, we
investigated the performance of two single-class classification frameworks—Biased Support Vector
Machine (BSVM) and Mixture Tuned Matched Filtering (MTMF)—to estimate the degree of Psidium
cattleianum incidence over a range of forest vertical strata (relative canopy density). We demonstrate
that both BSVM and MTMF have the ability to detect relative canopy density of a single focal plant
species in a vertically stratified forest, but they differ in the degree of user input required. Our results
suggest BSVM as a promising method to disentangle spectrally-mixed classifications, as this approach
generates decision values from a similarity function (kernel), which optimizes complex comparisons
between classes using a dynamic machine learning process.
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Keywords/Subjects: invasive species strawberry guava single-class classification mixture tuned matched filtering biased support vector machine Carnegie Airborne Observatory |
Type of document: info:eu-repo/semantics/article |
Access rights: info:eu-repo/semantics/openAccess Attribution-NonCommercial-NoDerivatives 4.0 Internacional |
DOI: https://doi.org/10.3390/rs8010033 |
Published in: Remote Sens. 2016, 8(1), 33; |
Appears in Collections: Artículos - Biología Aplicada
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