Comparison of Airborne LiDAR and Satellite Hyperspectral Remote Sensing to Estimate Vascular Plant Richness in Deciduous Mediterranean Forests of Central Chile
Author
dc.contributor.author
Ceballos, Andrés
Author
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Hernández Palma, Héctor
Author
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Corvalán Vera, Carlos
Author
dc.contributor.author
Galleguillos Torres, Mauricio
Admission date
dc.date.accessioned
2015-08-17T15:41:23Z
Available date
dc.date.available
2015-08-17T15:41:23Z
Publication date
dc.date.issued
2015
Cita de ítem
dc.identifier.citation
Remote Sens. 2015, 7, 2692-2714
en_US
Identifier
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10.3390/rs70302692
Identifier
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https://repositorio.uchile.cl/handle/2250/132762
General note
dc.description
Artículo de publicación ISI
en_US
Abstract
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The Andes foothills of central Chile are characterized by high levels of floristic diversity in a scenario, which offers little protection by public protected areas. Knowledge of the spatial distribution of this diversity must be gained in order to aid in conservation management. Heterogeneous environmental conditions involve an important number of niches closely related to species richness. Remote sensing information derived from satellite hyperspectral and airborne Light Detection and Ranging (LiDAR) data can be used as proxies to generate a spatial prediction of vascular plant richness. This study aimed to estimate the spatial distribution of plant species richness using remote sensing in the Andes foothills of the Maule Region, Chile. This region has a secondary deciduous forest dominated by Nothofagus obliqua mixed with sclerophyll species. Floristic measurements were performed using a nested plot design with 60 plots of 225 m(2) each. Multiple predictors were evaluated: 30 topographical and vegetation structure indexes from LiDAR data, and 32 spectral indexes and band transformations from the EO1-Hyperion sensor. A random forest algorithm was used to identify relevant variables in richness prediction, and these variables were used in turn to obtain a final multiple linear regression predictive model (Adjusted R-2 = 0.651; RSE = 3.69). An independent validation survey was performed with significant results (Adjusted R-2 = 0.571, RMSE = 5.05). Selected variables were statistically significant: catchment slope, altitude, standard deviation of slope, average slope, Multiresolution Ridge Top Flatness index (MrRTF) and Digital Crown Height Model (DCM). The information provided by LiDAR delivered the best predictors, whereas hyperspectral data were discarded due to their low predictive power.
Comparison of Airborne LiDAR and Satellite Hyperspectral Remote Sensing to Estimate Vascular Plant Richness in Deciduous Mediterranean Forests of Central Chile