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Comparison of support vector machine, random forest and neural network classifiers for tree species classification on airborne hyperspectral APEX images

Autor
Raczko, Edwin
Zagajewski, Bogdan
Data publikacji
2017
Abstrakt (EN)

Knowledge of tree species composition in a forest is an important topic in forest management. Accurate tree species maps allow for much more detailed and in-depth analysis of biophysical forest variables. The paper presents a comparison of three classification algorithms: support vector machines (SVM), random forest (RF) and artificial neural networks (ANN) for tree species classification using airborne hyperspectral data from the Airborne Prism EXperiment sensor. The aim of this paper is to evaluate the three nonparametric classification algorithms (SVM, RF and ANN) in an attempt to classify the five most common tree species of the Szklarska Poręba area: spruce (Picea alba L. Karst), larch (Larix decidua Mill.), alder (Alnus Mill), beech (Fagus sylvatica L.) and birch (Betula pendula Roth). To avoid human introduced biases a 0.632 bootstrap procedure was used during evaluation of each compared classifier. Of all compared classification results, ANN achieved the highest median overall classification accuracy (77%) followed by SVM with 68% and RF with 62%. Analysis of the stability of results concluded that RF and SVM had the lowest variance of overall accuracy and kappa coefficient (12 percentage points) while ANN had 15 percentage points variance in results.

Słowa kluczowe EN
Support vector machines random forest artificial neural networks hyperspectral data classification
Dyscyplina PBN
geografia społeczno-ekonomiczna i gospodarka przestrzenna
Czasopismo
European Journal of Remote Sensing
Tom
50
Zeszyt
1
Strony od-do
144-154
Data udostępnienia w otwartym dostępie
2017-03-09
Licencja otwartego dostępu
Uznanie autorstwa