2023
DOI: 10.3390/f15010039
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Eucalyptus Species Discrimination Using Hyperspectral Sensor Data and Machine Learning

Larissa Pereira Ribeiro Teodoro,
Rosilene Estevão,
Dthenifer Cordeiro Santana
et al.

Abstract: The identification of tree species is very useful for the management and monitoring of forest resources. When paired with machine learning (ML) algorithms, species identification based on spectral bands from a hyperspectral sensor can contribute to developing technologies that enable accurate forest inventories to be completed efficiently, reducing labor and time. This is the first study to evaluate the effectiveness of classification of five eucalyptus species (E. camaldulensis, Corymbia citriodora, E. salign… Show more

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“…The formed clusters were used as output variables, while the spectral data were used as input variables for the following classification models in the machine learning analyses: Multilayer Perceptron Artificial Neural Network (ANN, [27]), REPTree Decision Tree Algorithm (DT, [28]), J48 Decision Tree Algorithm (J48, [29]), Logistic Regression (LR, [30]), random forest (RF, [31]), and Support Vector Machine (SVM, [32]). The algorithms were chosen according to those most recently used in the literature [16,33,34]. The inputs tested in the datasets were spectral bands (SBs), vegetation indices (VIs), and the combination of both VIs+SBs.…”
Section: Methodsmentioning
confidence: 99%
“…The formed clusters were used as output variables, while the spectral data were used as input variables for the following classification models in the machine learning analyses: Multilayer Perceptron Artificial Neural Network (ANN, [27]), REPTree Decision Tree Algorithm (DT, [28]), J48 Decision Tree Algorithm (J48, [29]), Logistic Regression (LR, [30]), random forest (RF, [31]), and Support Vector Machine (SVM, [32]). The algorithms were chosen according to those most recently used in the literature [16,33,34]. The inputs tested in the datasets were spectral bands (SBs), vegetation indices (VIs), and the combination of both VIs+SBs.…”
Section: Methodsmentioning
confidence: 99%