Abstract

Abstract. After an earthquake, damage assessment plays an important role in leading rescue team to help people and decrease the number of mortality. Damage map is a map that demonstrates collapsed buildings with their degree of damage. With this map, finding destructive buildings can be quickly possible. In this paper, we propose an algorithm for automatic damage map generation after an earthquake using post-event LiDAR Data and pre-event vector map. The framework of the proposed approach has four main steps. To find the location of all buildings on LiDAR data, in the first step, LiDAR data and vector map are registered by using a few number of ground control points. Then, building layer, selected from vector map, are mapped on the LiDAR data and all pixels which belong to the buildings are extracted. After that, through a powerful classifier all the extracted pixels are classified into three classes of “debris”, “intact building” and “unclassified”. Since textural information make better difference between “debris” and “intact building” classes, different textural features are applied during the classification. After that, damage degree for each candidate building is estimated based on the relation between the numbers of pixels labelled as “debris” class to the whole building area. Calculating the damage degree for each candidate building, finally, building damage map is generated. To evaluate the ability proposed method in generating damage map, a data set from Port-au-Prince, Haiti’s capital after the 2010 Haiti earthquake was used. In this case, after calculating of all buildings in the test area using the proposed method, the results were compared to the damage degree which estimated through visual interpretation of post-event satellite image. Obtained results were proved the reliability of the proposed method in damage map generation using LiDAR data.

Highlights

  • In recent years, natural disasters such as earthquake, flood, volcano eruption, drought, etc. took thousands of lives and had bad affection in people's life and many people become displaced

  • We propose an algorithm for automatic damage map generation after an earthquake using post-event LiDAR Data and pre-event vector map

  • As can be seen from the figure, in this method, pre-event vector map and post-event LiDAR data are required for generating damage map

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Summary

Introduction

Natural disasters such as earthquake, flood, volcano eruption, drought, etc. took thousands of lives and had bad affection in people's life and many people become displaced. Natural disasters such as earthquake, flood, volcano eruption, drought, etc. Took thousands of lives and had bad affection in people's life and many people become displaced. The necessity and importance of this issue need particular attention. Despite the immense technological advancements, humans still cannot predict earthquakes. In comparison with other natural disasters, earthquake is more significant. One of the biggest earthquakes of the 21 century is Haiti earthquake that occurred on 12 January 2010 a magnitude 7.0 Mw earthquake. The reports show 222,570 people killed, 300,000 injured, and 1.3 million people displaced. According to the United States Geological Survey (USGS), 97,294 houses were destroyed and 188,383 were damaged in Port-au-Prince and in much of southern Haiti

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