Airborne Lidar Sampling Pivotal for Accurate Regional AGB Predictions from Multispectral Images in Forest-Savanna Landscapes

Precise accounting of carbon stocks and fluxes in tropical vegetation using remote sensing approaches remains a challenging exercise, as both signal saturation and ground sampling limitations contribute to inaccurate extrapolations. Airborne LiDAR Scanning (ALS) data can be used as an intermediate l...

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Main Authors: Le Bienfaiteur T. Sagang, Pierre Ploton, Bonaventure Sonké, Hervé Poilvé, Pierre Couteron, Nicolas Barbier
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Remote Sensing
Subjects:
AGB
Online Access:https://www.mdpi.com/2072-4292/12/10/1637
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spelling doaj-4ee5d7ca6a4a47d680714ad4fed92a802020-11-25T03:03:13ZengMDPI AGRemote Sensing2072-42922020-05-01121637163710.3390/rs12101637Airborne Lidar Sampling Pivotal for Accurate Regional AGB Predictions from Multispectral Images in Forest-Savanna LandscapesLe Bienfaiteur T. Sagang0Pierre Ploton1Bonaventure Sonké2Hervé Poilvé3Pierre Couteron4Nicolas Barbier5Plant Systematic and Ecology Laboratory (LaBosystE), Department of Biology, Higher Teachers’ Training College, University of Yaoundé I, Yaoundé P.O. Box 047, CameroonAMAP, Univ Montpellier, IRD, CNRS, INRAE, CIRAD, 34394 Montpellier, FrancePlant Systematic and Ecology Laboratory (LaBosystE), Department of Biology, Higher Teachers’ Training College, University of Yaoundé I, Yaoundé P.O. Box 047, CameroonAirbus, Defence and Space, 31400 Toulouse, FranceAMAP, Univ Montpellier, IRD, CNRS, INRAE, CIRAD, 34394 Montpellier, FranceAMAP, Univ Montpellier, IRD, CNRS, INRAE, CIRAD, 34394 Montpellier, FrancePrecise accounting of carbon stocks and fluxes in tropical vegetation using remote sensing approaches remains a challenging exercise, as both signal saturation and ground sampling limitations contribute to inaccurate extrapolations. Airborne LiDAR Scanning (ALS) data can be used as an intermediate level to radically increase sampling and enhance model calibration. Here we tested the potential of using ALS data for upscaling vegetation aboveground biomass (AGB) from field plots to a forest-savanna transitional landscape in the Guineo–Congolian region in Cameroon, using either a design-based approach or a model-based approach leveraging multispectral satellite imagery. Two sets of reference data were used: (1) AGB values collected from 62 0.16-ha plots distributed both in forests and savannas; and (2) an AGB map generated form ALS data. In the model-based approach, we trained Random Forest models using predictors from recent sensors of varying spectral and spatial resolutions (Spot 6/7, Landsat 8, and Sentinel 2), along with biophysical predictors derived after pre-processing into the Overland processing chain, following a forward variable selection procedure with a spatial 4-folds cross validation. The models calibrated with field plots lead to a systematic overestimation in AGB density estimates and a root mean squared prediction error (RMSPE) of up to 65 Mg.ha<sup>−1</sup> (90%), whereas calibration with ALS lead to low bias and a drop of ~30% in RMSPE (down to 43 Mg.ha<sup>−1</sup>, 58%) with little effect of the satellite sensor used. Decomposing bias along the AGB density range, we show that multispectral images can (in some specific cases) be used for unbiased prediction at landscape scale on the basis of ALS-calibrated statistical models. However, our results also confirm that, whatever the spectral indices used and attention paid to sensor quality and pre-processing, the signal is not sufficient to warrant accurate pixelwise predictions, because of large relative RMSPE, especially above (200–250 t/ha). The design-based approach, for which average AGB density values were attributed to mapped land cover classes, proved to be a simple and reliable alternative (for landscape to region level estimations), when trained with dense ALS samples.https://www.mdpi.com/2072-4292/12/10/1637forest-savanna mosaicsAGBAirborne LiDARsatelliteupscalingmodel-based
collection DOAJ
language English
format Article
sources DOAJ
author Le Bienfaiteur T. Sagang
Pierre Ploton
Bonaventure Sonké
Hervé Poilvé
Pierre Couteron
Nicolas Barbier
spellingShingle Le Bienfaiteur T. Sagang
Pierre Ploton
Bonaventure Sonké
Hervé Poilvé
Pierre Couteron
Nicolas Barbier
Airborne Lidar Sampling Pivotal for Accurate Regional AGB Predictions from Multispectral Images in Forest-Savanna Landscapes
Remote Sensing
forest-savanna mosaics
AGB
Airborne LiDAR
satellite
upscaling
model-based
author_facet Le Bienfaiteur T. Sagang
Pierre Ploton
Bonaventure Sonké
Hervé Poilvé
Pierre Couteron
Nicolas Barbier
author_sort Le Bienfaiteur T. Sagang
title Airborne Lidar Sampling Pivotal for Accurate Regional AGB Predictions from Multispectral Images in Forest-Savanna Landscapes
title_short Airborne Lidar Sampling Pivotal for Accurate Regional AGB Predictions from Multispectral Images in Forest-Savanna Landscapes
title_full Airborne Lidar Sampling Pivotal for Accurate Regional AGB Predictions from Multispectral Images in Forest-Savanna Landscapes
title_fullStr Airborne Lidar Sampling Pivotal for Accurate Regional AGB Predictions from Multispectral Images in Forest-Savanna Landscapes
title_full_unstemmed Airborne Lidar Sampling Pivotal for Accurate Regional AGB Predictions from Multispectral Images in Forest-Savanna Landscapes
title_sort airborne lidar sampling pivotal for accurate regional agb predictions from multispectral images in forest-savanna landscapes
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-05-01
description Precise accounting of carbon stocks and fluxes in tropical vegetation using remote sensing approaches remains a challenging exercise, as both signal saturation and ground sampling limitations contribute to inaccurate extrapolations. Airborne LiDAR Scanning (ALS) data can be used as an intermediate level to radically increase sampling and enhance model calibration. Here we tested the potential of using ALS data for upscaling vegetation aboveground biomass (AGB) from field plots to a forest-savanna transitional landscape in the Guineo–Congolian region in Cameroon, using either a design-based approach or a model-based approach leveraging multispectral satellite imagery. Two sets of reference data were used: (1) AGB values collected from 62 0.16-ha plots distributed both in forests and savannas; and (2) an AGB map generated form ALS data. In the model-based approach, we trained Random Forest models using predictors from recent sensors of varying spectral and spatial resolutions (Spot 6/7, Landsat 8, and Sentinel 2), along with biophysical predictors derived after pre-processing into the Overland processing chain, following a forward variable selection procedure with a spatial 4-folds cross validation. The models calibrated with field plots lead to a systematic overestimation in AGB density estimates and a root mean squared prediction error (RMSPE) of up to 65 Mg.ha<sup>−1</sup> (90%), whereas calibration with ALS lead to low bias and a drop of ~30% in RMSPE (down to 43 Mg.ha<sup>−1</sup>, 58%) with little effect of the satellite sensor used. Decomposing bias along the AGB density range, we show that multispectral images can (in some specific cases) be used for unbiased prediction at landscape scale on the basis of ALS-calibrated statistical models. However, our results also confirm that, whatever the spectral indices used and attention paid to sensor quality and pre-processing, the signal is not sufficient to warrant accurate pixelwise predictions, because of large relative RMSPE, especially above (200–250 t/ha). The design-based approach, for which average AGB density values were attributed to mapped land cover classes, proved to be a simple and reliable alternative (for landscape to region level estimations), when trained with dense ALS samples.
topic forest-savanna mosaics
AGB
Airborne LiDAR
satellite
upscaling
model-based
url https://www.mdpi.com/2072-4292/12/10/1637
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