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001-es BibID:BIBFORM083405
035-os BibID:(WOS)000352275900002 (Scopus)84926284886
Első szerző:Burai Péter (agrármérnök)
Cím:Classification of Herbaceous Vegetation Using Airborne Hyperspectral Imagery / Péter Burai, Balázs Deák, Orsolya Valkó, Tamás Tomor
Dátum:2015
ISSN:2072-4292
Megjegyzések:Alkali landscapes hold an extremely fine-scale mosaic of several vegetation types, thus it seems challenging to separate these classes by remote sensing. Our aim was to test the applicability of different image classification methods of hyperspectral data in this complex situation. To reach the highest classification accuracy, we tested traditional image classifiers (maximum likelihood classifier-MLC), machine learning algorithms (support vector machine-SVM, random forest-RF) and feature extraction (minimum noise fraction (MNF)-transformation) on training datasets of different sizes. Digital images were acquired from an AISA EAGLE II hyperspectral sensor of 128 contiguous bands (400-1000 nm), a spectral sampling of 5 nm bandwidth and a ground pixel size of 1 m. For the classification, we established twenty vegetation classes based on the dominant species, canopy height, and total vegetation cover. Image classification was applied to the original and MNF (minimum noise fraction) transformed dataset with various training sample sizes between 10 and 30 pixels. In order to select the optimal number of the transformed features, we applied SVM, RF and MLC classification to 2-15 MNF transformed bands. In the case of the original bands, SVM and RF classifiers provided high accuracy irrespective of the number of the training pixels. We found that SVM and RF produced the best accuracy when using the first nine MNF transformed bands; involving further features did not increase classification accuracy. SVM and RF provided high accuracies with the transformed bands, especially in the case of the aggregated groups. Even MLC provided high accuracy with 30 training pixels (80.78%), but the use of a smaller training dataset (10 training pixels) significantly reduced the accuracy of classification (52.56%). Our results suggest that in alkali landscapes, the application of SVM is a feasible solution, as it provided the highest accuracies compared to RF and MLC. SVM was not sensitive in the training sample size, which makes it an adequate tool when only a limited number of training pixels are available for some classes.
Tárgyszavak:Természettudományok Biológiai tudományok idegen nyelvű folyóiratközlemény külföldi lapban
folyóiratcikk
grassland
habitat mapping
hyperspectral
maximum likelihood classifier
minimum noise fraction
nature conservation
open landscape
random forest
support vector machine
Megjelenés:Remote Sensing. - 7 : 2 (2015), p. 2046-2066. -
További szerzők:Deák Balázs (1978-) (biológus) Valkó Orsolya (1985-) (biológus) Tomor Tamás (1976-) (geográfus)
Pályázati támogatás:INSPIRE - KEOP-6.3.0/2F/09-2010-0012
Egyéb
TÁMOP-4.2.3.-12/1/KONV-0047
TÁMOP
OTKA PD 111807
OTKA
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