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Mapping of the Successional Stage of a Secondary Forest Using Point Clouds Derived from UAV Photogrammetry
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Mapping of the Successional Stage of a Secondary Forest Using Point Clouds Derived from UAV Photogrammetry
Journal
Remote Sensing
Date Issued
2023
Author(s)
Cabral R.P.
da Silva G.F.
de Almeida A.Q.
Bonilla Bedoya, Santiago
Centro de Investigación para el Territorio y el Hábitat Sostenible
Dias H.M.
De Mendonça A.R.
Rodrigues N.M.M.
Valente C.C.A.
Oliveira K.
Gonçalves F.G.
Sarcinelli T.S.
Type
Article
DOI
10.3390/rs15020509
URL
https://cris.indoamerica.edu.ec/handle/123456789/8443
Abstract
The definition of strategies for forest restoration projects depends on information of the successional stage of the area to be restored. Usually, classification of the successional stage is carried out in the field using forest inventory campaigns. However, these campaigns are costly, time-consuming, and limited in terms of spatial coverage. Currently, forest inventories are being improved using 3D data obtained from remote sensing. The objective of this work was to estimate several parameters of interest for the classification of the successional stages of secondary vegetation areas using 3D digital aerial photogrammetry (DAP) data obtained from unmanned aerial vehicles (UAVs). A cost analysis was also carried out considering the costs of equipment and data collection, processing, and analysis. The study was carried out in southeastern Brazil in areas covered by secondary Atlantic Forest. Regression models were fit to estimate total height (h), diameter at breast height (dbh), and basal area (ba) of trees in 40 field inventory plots (0.09 ha each). The models were fit using traditional metrics based on heights derived from DAP and a portable laser scanner (PLS). The prediction models based on DAP data yielded a performance similar to models fit with LiDAR, with values of R² ranging from 88.3% to 94.0% and RMSE between 11.1% and 28.5%. Successional stage maps produced by DAP were compatible with the successional classes estimated in the 40 field plots. The results show that UAV photogrammetry metrics can be used to estimate h, dbh, and ba of secondary vegetation with an accuracy similar to that obtained from LiDAR. In addition to presenting the lowest cost, the estimates derived from DAP allowed for the classification of successional stages in the analyzed secondary forest areas. © 2023 by the authors.
Subjects
conservation; diverge...
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Jun 6, 2024
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