Titel
Arctic Tundra Land Cover Classification on the Beaufort Coast Using the Kennaugh Element Framework on Dual-Polarimetric TerraSAR-X Imagery
Autor*in
Willeke A’Campo
Department of Physical Geography, Stockholm University
Autor*in
Autor*in
Achim Roth
German Remote Sensing Data Center (DFD), German Aerospace Center (DLR)
... show all
Abstract
Arctic tundra landscapes are highly complex and are rapidly changing due to the warming climate. Datasets that document the spatial and temporal variability of the landscape are needed to monitor the rapid changes. Synthetic Aperture Radar (SAR) imagery is specifically suitable for monitoring the Arctic, as SAR, unlike optical remote sensing, can provide time series regardless of weather and illumination conditions. This study examines the potential of seasonal backscatter mechanisms in Arctic tundra environments for improving land cover classification purposes by using a time series of HH/HV TerraSAR-X (TSX) imagery. A Random Forest (RF) classification was applied on multi-temporal Sigma Nought intensity and multi-temporal Kennaugh matrix element data. The backscatter analysis revealed clear differences in the polarimetric response of water, soil, and vegetation, while backscatter signal variations within different vegetation classes were more nuanced. The RF models showed that land cover classes could be distinguished with 92.4% accuracy for the Kennaugh element data, compared to 57.7% accuracy for the Sigma Nought intensity data. Texture predictors, while improving the classification accuracy on the one hand, degraded the spatial resolution of the land cover product. The Kennaugh elements derived from TSX winter acquisitions were most important for the RF model, followed by the Kennaugh elements derived from summer and autumn acquisitions. The results of this study demonstrate that multi-temporal Kennaugh elements derived from dual-polarized X-band imagery are a powerful tool for Arctic tundra land cover mapping.
Stichwort
Synthetic Aperture Radar (SAR)polarimetryKennaugh Element Framework (KEF)TerraSAR-X (TSX)ArctictundraRandom Forest (RF)
Objekt-Typ
Sprache
Englisch [eng]
Persistent identifier
https://phaidra.univie.ac.at/o:1597265
Erschienen in
Titel
Remote Sensing
Band
13
Ausgabe
23
ISSN
2072-4292
Erscheinungsdatum
2021
Verlag
MDPI AG
Erscheinungsdatum
2021
Zugänglichkeit
Rechteangabe
© 2021 by the authors

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