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  4. Tree Species Classification Based on Hybrid Ensembles of a Convolutional Neural Network (CNN) and Random Forest Classifiers
 
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2019
Journal Article
Title

Tree Species Classification Based on Hybrid Ensembles of a Convolutional Neural Network (CNN) and Random Forest Classifiers

Abstract
In this paper, we evaluate different popular voting strategies for fusion of classifier results. A convolutional neural network (CNN) and different variants of random forest (RF) classifiers were trained to discriminate between 15 tree species based on airborne hyperspectral imaging data. The spectral data was preprocessed with a multi-class linear discriminant analysis (MCLDA) as a means to reduce dimensionality and to obtain spatial-spectral features. The best individual classifier was a CNN with a classification accuracy of 0.73 +/− 0.086. The classification performance increased to an accuracy of 0.78 +/− 0.053 by using precision weighted voting for a hybrid ensemble of the CNN and two RF classifiers. This voting strategy clearly outperformed majority voting (0.74), accuracy weighted voting (0.75), and presidential voting (0.75).
Author(s)
Knauer, Uwe  
Rekowski, Cornelius Styp von
Stecklina, Marianne
Krokotsch, Tilman
Pham Minh, Tuan
Hauffe, Viola
Kilias, David
Ehrhardt, Ina  
Sagischewski, Herbert
Chmara, Sergej
Seiffert, Udo
Journal
Remote sensing  
Open Access
DOI
10.3390/rs11232788
File(s)
N-592896.pdf (2.09 MB)
Rights
CC BY 4.0: Creative Commons Attribution
Language
English
Fraunhofer-Institut für Fabrikbetrieb und -automatisierung IFF  
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