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Simulating Imaging Spectroscopy in Tropical Forest with 3D Radiative Transfer Modeling

Optical remote sensing can contribute to biodiversity monitoring and species composition mapping in tropical forests. Inferring ecological information from canopy reflectance is complex and data availability suitable to such a task is limiting, which makes simulation tools particularly important in...

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Published in:Remote sensing (Basel, Switzerland) Switzerland), 2021-06, Vol.13 (11), p.2120
Main Authors: Ebengo, Dav M., de Boissieu, Florian, Vincent, Grégoire, Weber, Christiane, Féret, Jean-Baptiste
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description Optical remote sensing can contribute to biodiversity monitoring and species composition mapping in tropical forests. Inferring ecological information from canopy reflectance is complex and data availability suitable to such a task is limiting, which makes simulation tools particularly important in this context. We explored the capability of the 3D radiative transfer model DART (Discrete Anisotropic Radiative Transfer) to simulate top of canopy reflectance acquired with airborne imaging spectroscopy in a complex tropical forest, and to reproduce spectral dissimilarity within and among species, as well as species discrimination based on spectral information. We focused on two factors contributing to these canopy reflectance properties: the horizontal variability in leaf optical properties (LOP) and the fraction of non-photosynthetic vegetation (NPVf). The variability in LOP was induced by changes in leaf pigment content, and defined for each pixel based on a hybrid approach combining radiative transfer modeling and spectral indices. The influence of LOP variability on simulated reflectance was tested by considering variability at species, individual tree crown and pixel level. We incorporated NPVf into simulations following two approaches, either considering NPVf as a part of wood area density in each voxel or using leaf brown pigments. We validated the different scenarios by comparing simulated scenes with experimental airborne imaging spectroscopy using statistical metrics, spectral dissimilarity (within crowns, within species, and among species dissimilarity) and supervised classification for species discrimination. The simulation of NPVf based on leaf brown pigments resulted in the closest match between measured and simulated canopy reflectance. The definition of LOP at pixel level resulted in conservation of the spectral dissimilarity and expected performances for species discrimination. Therefore, we recommend future research on forest biodiversity using physical modeling of remote-sensing data to account for LOP variability within crowns and species. Our simulation framework could contribute to better understanding of performances of species discrimination and the relationship between spectral variations and taxonomic and functional dimensions of biodiversity. This work contributes to the improved integration of physical modeling tools for applications, focusing on remotely sensed monitoring of biodiversity in complex ecosystems, for current sensors,
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Therefore, we recommend future research on forest biodiversity using physical modeling of remote-sensing data to account for LOP variability within crowns and species. Our simulation framework could contribute to better understanding of performances of species discrimination and the relationship between spectral variations and taxonomic and functional dimensions of biodiversity. 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subjects Biodiversity
Biodiversity and Ecology
Botanics
Canopies
DART
diversity mapping
Ecology, environment
Ecosystems
Environmental Sciences
Forestry research
Forests
Hypotheses
Image acquisition
imaging spectroscopy
leaf traits
Leaves
Life Sciences
Modelling
Optical properties
Photosynthesis
Pigments
Pixels
PROSPECT
Radiation
Radiative transfer
Reflectance
Remote monitoring
Remote sensing
Remote sensors
Sensors
Simulation
Species classification
Species composition
Spectra
Spectroscopy
Spectrum analysis
Systematics, Phylogenetics and taxonomy
Three dimensional models
Tropical forests
Variability
Vegetal Biology
Vegetation
title Simulating Imaging Spectroscopy in Tropical Forest with 3D Radiative Transfer Modeling
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