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Projeto de investigação
Biometrical forest characterization throughout remote sensing
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Forest biometric characterization through remote sensing applications
Publication . Cosenza, Diogo Nepomuceno; Tomé, Margarida; Carvalho, Ana Paula Soares
The general objective of this thesis was to step forward in the application of aerial 3D-data in
the forest characterization context. To meet this goal, the thesis focused on four cutting-edge
research topics related to the forestry applications of 3D data collected by airborne laser scanning
(ALS) and digital aerial photogrammetry (DAP).
Four common algorithms were deeply investigated to filter ALS ground points. The results
showed that performing exhaustive filter calibration is not mandatory to derive accurate digital terrain
models (DTM), that the applications of software defaults can derive accurate DTM as well, and that
filter calibration has a significant but low practical improvement on the prediction of forest attributes
using area-based approach (ABA).
The application of the high-flexible Johnson’s SB probability density function (PDF) was
adapted to the ALS data and compared with the Weibull PDF to estimate diameter distributions in
two forest stands, an eucalyptus stand and a radiate pine stand. Johnsons SB was highly sensitive
to the prediction of the inputs used to fit the parameters, reasons why this function was just slightly
better than Weibull.
The ALS data from five different forest sites were used to compare three common modeling
approaches used to estimate growing stock volume, ordinary least squares (OLS), random forest
(RF), and k-nearest neighbor (kNN). The estimation was more accurate with OLS and RF. The kNNbased
models had the worst prediction accuracy and may result in overfitting.
The point clouds derived from ALS and DAP presented comparable results when it comes to
detect and estimate individual tree volumes in eucalyptus plantations. This result benefits the DAP
since it is an inexpensive approach to collect 3D forest data, especially when associated with
unmanned aerial vehicles
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Entidade financiadora
Fundação para a Ciência e a Tecnologia
Programa de financiamento
OE
Número da atribuição
PD/BD/128489/2017
