4.5 Article

Towards an automated SAR-based flood monitoring system: Lessons learned from two case studies

Journal

PHYSICS AND CHEMISTRY OF THE EARTH
Volume 36, Issue 7-8, Pages 241-252

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.pce.2010.12.009

Keywords

Synthetic aperture radar; Flood mapping; Remote sensing; ENVISAT; RADARSAT

Funding

  1. Belgian Federal Science Policy Office [SR/00/100]
  2. National Research Fund of Luxembourg

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This paper aims at contributing to the elaboration of new concepts for an efficient and standardized Synthetic Aperture Radar (SAR) based monitoring of floods. Algorithms that enable an automatic delineation of flooded areas are an essential component of any SAR-based monitoring service but are to date quasi non-existent. Here we propose a hybrid methodology, which combines radiometric thresholding and region growing as an approach enabling the automatic, objective and reliable flood extent extraction from SAR images. The method relies on the calibration of a statistical distribution of 'open water' backscatter values inferred from SAR images of floods. A radiometric thresholding provides the seed region for a subsequent region growing process. Change detection is included as an additional step that limits over-detection of inundated areas. Two variants of the proposed flood extraction algorithm (with and without integration of reference images) are tested against four state-of-the-art benchmark methods. The methods are evaluated through two case studies: the July 2007 flood of the Severn river (UK) and the February 1997 flood of the Red river (US). Our trial cases show that considering a reference pre- or post-flood image gives the same performance as optimized manual approaches. This encouraging result indicates that the proposed method may indeed outperform all manual approaches if no training data are available and the parameters associated with these methods are determined in a non-optimal way. The results further demonstrate the algorithm's potential for accurately processing data from different SAR sensors. (C) 2010 Elsevier Ltd. All rights reserved.

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