Remote sensing satellite imagery and risk management : image based information extraction

The introduction of high and very high resolution multispectral satellite imagery, characterized by ground resolution from one to a few meters, has lead to a new perspective in processes of risk estimation, mitigation and management. In particular, the possibility of obtaining, in a very short time,...

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Bibliographic Details
Published inWIT Transactions on Information and Communication Technologies Vol. 39; pp. 149 - 158
Main Authors BITELLI, G, GUSELLA, L
Format Conference Proceeding
LanguageEnglish
Published Southampton WIT 01.01.2008
Boston
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Summary:The introduction of high and very high resolution multispectral satellite imagery, characterized by ground resolution from one to a few meters, has lead to a new perspective in processes of risk estimation, mitigation and management. In particular, the possibility of obtaining, in a very short time, a wide-scene image of areas subjected to a crisis has become useful both for emergency management and for effective damage estimation. Examples of images in the immediate aftermath of natural disasters such as earthquakes, hurricanes, floods, fires, tsunami, volcanic eruptions, etc, have also been globally distributed through information media and web based image systems such as Google Earth. However, a concrete possibility of extracting quantitative information from such images is subject to several factors: first of all, accessibility in term of timing in image acquisition and in image delivery to stakeholders, followed by image quality (resolution, absence of clouds, geo-location, informative content, etc.), and finally the methodology for the information extraction process. After a review of the problem and of the current situation in terms of available data and applications, this paper focus on an approach for information extraction and quantitative image classification, in particular by object oriented analysis. One of the major objectives is to show the possibility of obtaining the outlines and the count of the buildings for an area affected by a severe disaster, saving human time in image interpretation in procedures of risk management and in estimating rebuilding costs; the integration of information coming from existing building databases is also considered. The experiences show the potential of the method and promising results in the classification accuracy.
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ISBN:1845641043
9781845641047
ISSN:1746-4463
DOI:10.2495/RISK080161