A large part of arid areas in tropical and sub-tropical regions are dominated by sparse xerophytic vegetation, which are essential for providing products and services for local populations. While a large number of researches already exist for the derivation of wall-to-wall estimations of above ground biomass (AGB) with remotely sensed data, only a few of them are based on the direct use of non-photogrammetric aerial photography. In this contribution we present an experiment carried out in a study area located in the Santiago Island in the Cape Verde archipelago where a National Forest Inventory (NFI) was recently carried out together with a new acquisition of a visible high-resolution aerial orthophotography. We contrasted two approaches: single-tree, based on the automatic delineation of tree canopies; and area-based, on the basis of an automatic image classification. Using184fieldplotscollectedfortheNFIwecreatedparametricmodelstopredictAGB onthebasisofthecrownprojectionarea(CPA)estimatedfromthetwoapproaches. Boththemethods produced similar root mean square errors (RMSE) at pixel level 45% for the single-tree and 42% for the area-based. However, the latest was able to better predict the AGB along all the variable range, limiting the saturation problem which is evident when the CPA tends to reach the full coverage of the field plots. These findings demonstrate that in regions dominated by sparse vegetation, a simple aerial orthophoto can be used to successfully create AGB wall-to-wall predictions. The level of these estimations’uncertaintypermitsthederivationofsmallareaestimationsusefulforsupportingamore correct implementation of sustainable management practices of wood resources.

Biomass Estimation of Xerophytic Forests Using Visible Aerial Imagery: Contrasting Single-Tree and Area-Based Approaches / Bernasconi, Luca; Chirici, Gherardo; Marchetti, Marco. - In: REMOTE SENSING. - ISSN 2072-4292. - 9:4(2017), pp. 334-345. [10.3390/rs9040334]

Biomass Estimation of Xerophytic Forests Using Visible Aerial Imagery: Contrasting Single-Tree and Area-Based Approaches

MARCHETTI, Marco
2017

Abstract

A large part of arid areas in tropical and sub-tropical regions are dominated by sparse xerophytic vegetation, which are essential for providing products and services for local populations. While a large number of researches already exist for the derivation of wall-to-wall estimations of above ground biomass (AGB) with remotely sensed data, only a few of them are based on the direct use of non-photogrammetric aerial photography. In this contribution we present an experiment carried out in a study area located in the Santiago Island in the Cape Verde archipelago where a National Forest Inventory (NFI) was recently carried out together with a new acquisition of a visible high-resolution aerial orthophotography. We contrasted two approaches: single-tree, based on the automatic delineation of tree canopies; and area-based, on the basis of an automatic image classification. Using184fieldplotscollectedfortheNFIwecreatedparametricmodelstopredictAGB onthebasisofthecrownprojectionarea(CPA)estimatedfromthetwoapproaches. Boththemethods produced similar root mean square errors (RMSE) at pixel level 45% for the single-tree and 42% for the area-based. However, the latest was able to better predict the AGB along all the variable range, limiting the saturation problem which is evident when the CPA tends to reach the full coverage of the field plots. These findings demonstrate that in regions dominated by sparse vegetation, a simple aerial orthophoto can be used to successfully create AGB wall-to-wall predictions. The level of these estimations’uncertaintypermitsthederivationofsmallareaestimationsusefulforsupportingamore correct implementation of sustainable management practices of wood resources.
2017
aboveground biomass; high spatial resolution visible aerial imagery; area-based; single-tree; xerophytic forests; Prosopis sp; Cape Verde
01 Pubblicazione su rivista::01a Articolo in rivista
Biomass Estimation of Xerophytic Forests Using Visible Aerial Imagery: Contrasting Single-Tree and Area-Based Approaches / Bernasconi, Luca; Chirici, Gherardo; Marchetti, Marco. - In: REMOTE SENSING. - ISSN 2072-4292. - 9:4(2017), pp. 334-345. [10.3390/rs9040334]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1715165
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