DocumentCode
3596385
Title
Automatic floods detection with a kernel k-means approach
Author
Razafipahatelo, D. ; Rakotoniaina, S. ; Rakotondraompiana, S.
Author_Institution
Remote Sensing & Environ. Geophys. Lab., Inst. & Obs. of Geophys. Antananarivo, Antananarivo, Madagascar
fYear
2014
Firstpage
1
Lastpage
4
Abstract
The important information for flooding crises management is to have a map showing a contour of damaged areas in a few times as possible. The remote sensing imagers, especially the Synthetic Aperture Radar (SAR) in a high spatial resolution can offer a global view of the situation. Indeed, detection of flooded areas will become a challenge since the reaction time of the teams on the ground should be as short as possible. Such method should avoid a complex parameterization, large time of compilation and long intervention of the operator. An automatic method based on an unsupervised clustering done in three steps is proposed. First of all, a Digital Elevation Model (DEM) is used as a prior information to localize high probability of floods. Then, the separation of the wet and dry pixels is done by a method called non-linear clustering kernel k-means. Finally, to isolate the flooded pixels from the permanent water, a non linear clustering with a log ratio image is applied in the features space. Two images polarized Vertical-Vertical (VV) with a high spatial resolution from RADARSAT 2 were used in this work. The study area is localized in the South-west part of Madagascar (Toliary). The Haruna hurricane was passed in this region on February 22nd, 2013. The final result of this study is a map showing the flooded areas. Because of lack of ground truth data, we couldn´t valid our result with a confusion matrix. But we have compared it with the results obtained by current methods as the manual and the color composite methods. The comparison has shown that our approach has had a good compromise on flood detection.
Keywords
digital elevation models; emergency management; floods; geophysical image processing; image colour analysis; pattern clustering; radar imaging; remote sensing by radar; storms; synthetic aperture radar; DEM; Haruna hurricane; RADARSAT 2; SAR; automatic floods detection; automatic method; color composite method; complex parameterization; confusion matrix; digital elevation model; dry pixel; flooded area detection; flooded pixel; flooding crises management; ground truth data; high spatial resolution; kernel k-means approach; log ratio image; nonlinear clustering kernel k-means; permanent water; polarized vertical-vertical images; remote sensing imagers; synthetic aperture radar; unsupervised clustering; wet pixel; Image resolution; Kernel; Sensors; Standards; Haruna hurricane; Synthetic Aperture Radar; change detection; features space; kernel methods; log-ratio; remote sensing;
fLanguage
English
Publisher
ieee
Conference_Titel
Humanitarian Technology Conference - (IHTC), 2014 IEEE Canada International
Print_ISBN
978-1-4799-3995-4
Type
conf
DOI
10.1109/IHTC.2014.7147515
Filename
7147515
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