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Titel
Assessment of landslide-induced morphology changes using an object-based image analysis approach : a case study of Hítardalur, Iceland
VerfasserDabiri, Zahra ; Hölbling, Daniel ; Abad, L. ; Tiede, Dirk
Enthalten in
The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, 2019, XLII-3/W8 (2019), S. 109-114
ErschienenGöttingen : Copernicus, 2019
MaterialOnline-Ressource
SpracheEnglisch
DokumenttypAufsatz in einer Zeitschrift
Schlagwörter (EN)Landslide / Earth Observation (EO) / River System / Object-Based Image Analysis (OBIA) / Sentinel-1 / Iceland
ISSN2194-9034
URNurn:nbn:at:at-ubs:3-16477 
DOI10.5194/isprs-archives-XLII-3-W8-109-2019 
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Abstract

On July 7, 2018, a large landslide occurred at the eastern slope of the Fagraskógarfjall Mountain in Hítardalur valley in West Iceland. The landslide dammed the river, led to the formation of a lake and, consequently, to a change in the river course. The main focus of this research is to develop a knowledge-based expert system using an object-based image analysis (OBIA) approach for identifying morphology changes caused by the Hítardalur landslide. We use synthetic aperture radar (SAR) and optical remote sensing data, in particular from Sentinel-1/2 for detection of the landslide and its effects on the river system. We extracted and classified the landslide area, the landslide-dammed lake, other lakes and the river course using intensity information from S1 and spectral information from S2 in the object-based framework. Future research will focus on further developing this approach to support mapping and monitoring of the spatio-temporal dynamics of surface morphology in an object-based framework by combining SAR and optical data. The results can reveal details on the applicability of different remote sensing data for the spatio-temporal investigation of landslides, landslide-induced river course changes and lake formation and lead to a better understanding of the impact of large landslides on river systems.

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