Detection of Floods In Sar Images with Non-Linear Kernel Clustering and Topographic Prior

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Type
Inproceedings: an article in a conference proceedings.
Publication sub-type
Abstract (Abstract): shot summary in a article that contain essentials elements presented during a scientific conference, lecture or from a poster.
Collection
Publications
Title
Detection of Floods In Sar Images with Non-Linear Kernel Clustering and Topographic Prior
Title of the conference
EUSIPCO 2013, European Signal Processing Conference
Author(s)
De Morsier F., Rasamimalala M, Tuia D., Borgeaud M., Rakotoniaina S., Rakotondraompiana S., Thiran J.P.
Address
Marrakech, Morocco, September 9-13, 2013
Publication state
Published
Issued date
2013
Language
english
Abstract
After a major flood catastrophe, a precious information
is the delineation of the affected areas. Remote sensing
imagery, especially synthetic aperture radar, allows to
obtain a global and complete view of the situation.
However, the detection of the flooded areas remains a
challenge, especially since the reaction time for ground
teams is very short. This makes the application of
automatic detection routines appealing. Such methods must
avoid complex parametrization, heavy computational time
and long intervention by the operator. We propose an
automatic three steps strategy, starting by rebalancing
the different types of pixels (non-water, permanent water
and flooded) using digital elevation model information,
then isolating water pixels and finally separating
flooded from permanent water pixels using non-linear
clustering in dedicated feature spaces. Experiments on
two sets of ASAR images show the effectiveness of the
method competing with supervised standard log-ratio
thresholding.
Keywords
log-ratio, feature space, LTS5, flood detection, synthetic aperture radar, kernel methods, change, detection
Create date
06/01/2014 21:46
Last modification date
20/08/2019 16:15
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