Abstract

This work proposes methodologies aimed at evaluating the sensitivity of optical and synthetic aperture radar (SAR) change features obtained from satellite images with respect to the damage grade due to an earthquake. The test case is the Mw 7.0 earthquake that hit Haiti on January 12, 2010, located 25 km west–south–west of the city of Port-au-Prince. The disastrous shock caused the collapse of a huge number of buildings and widespread damage. The objective is to investigate possible parameters that can affect the robustness and sensitivity of the proposed methods derived from the literature. It is worth noting how the proposed analysis concerns the estimation of derived features at object scale. For this purpose, a segmentation of the study area into several regions has been done by considering a set of polygons, over the city of Port-au-Prince, extracted from the open source open street map geo-database. The analysis of change detection indicators is based on ground truth information collected during a postearthquake survey and is available from a Joint Research Centre database. The resulting damage map is expressed in terms of collapse ratio, thus indicating the areas with a greater number of collapsed buildings. The available satellite dataset is composed of optical and SAR images, collected before and after the seismic event. In particular, we used two GeoEye-1 optical images (one preseismic and one postseismic) and three TerraSAR-X SAR images (two preseismic and one postseismic). Previous studies allowed us to identify some features having a good sensitivity with damage at the object scale. Regarding the optical data, we selected the normalized difference index and two quantities coming from the information theory, namely the Kullback–Libler divergence (KLD) and the mutual information (MI). In addition, for the SAR data, we picked out the intensity correlation difference and the KLD parameter. In order to analyze the capability of these parameters to correctly detect damaged areas, two different classifiers were used: the Naive Bayes and the support vector machine classifiers. The classification results demonstrate that the simultaneous use of several change features from Earth observations can improve the damage estimation at object scale.

Highlights

  • A rapid earthquake damage assessment, right after a seismic event, can address civil protection interventions toward the most affected areas

  • We have investigated a number of change detection features obtained from satellite images in order to test the capability to assess damages due to an earthquake

  • The main innovation of the proposed analysis concerns the estimation of derived features at the object scale, assuming a segmentation of the area of interest based on the open street map geo-database

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Summary

Introduction

Satellite data can be very useful for this purpose, thanks to the wide coverage, the high spatial resolution, and their intrinsic capability to provide a synoptic view over remote regions all over the world. The damage assessment is based on change detection techniques capable of observing an object at different times and of identifying changes. The basic premise in such a use of satellite data is that changes in land cover correspond to changes in radiance values. These latter must be large with respect to radiance changes caused by other disturbing factors (i.e., atmospheric conditions, soil moisture, etc.).[1,2] Both optical and Journal of Applied Remote Sensing

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