Measures of Spatial Autocorrelation Changes in Multitemporal SAR Images for Event Landslides Detection
Articolo
Data di Pubblicazione:
2017
Abstract:
Landslides cause damages and affect victims worldwide, but landslide information is
lacking. Even large events may not leave records when they happen in remote areas or simply
do not impact with vulnerable elements. This paper proposes a procedure to measure spatial
autocorrelation changes induced by event landslides in a multi-temporal series of synthetic aperture
radar (SAR) intensity Sentinel-1 images. The procedure first measures pixel-based changes between
consecutive couples of SAR intensity images using the Log-Ratio index, then it follows the temporal
evolution of the spatial autocorrelation inside the Log-Ratio layers using the Moran's I index and the
semivariance. When an event occurs, the Moran's I index and the semivariance increase compared
to the values measured before and after the event. The spatial autocorrelation growth is due to the
local homogenization of the soil response caused by the event landslide. The emerging clusters of
autocorrelated pixels generated by the event are localized by a process of optimal segmentation of
the log-ratio layers. The procedure was used to intercept an event that occurred in August 2015
in Myanmar, Tozang area, when strong rainfall precipitations triggered a number of landslides.
A prognostic use of the method promises to increase the availability of information about the number
of events at the regional scale, and to facilitate the production of inventory maps, yielding useful
results to study the phenomenon for model tuning, landslide forecast model validation, and the
relationship between triggering factors and number of occurred events.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Remote Sensing Landslide Events SAR
Elenco autori:
Mondini, ALESSANDRO CESARE
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