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Original Articles

Information extraction from very high resolution satellite imagery over Lukole refugee camp, Tanzania

, , &
Pages 4251-4266 | Received 21 Feb 2002, Accepted 15 Aug 2002, Published online: 07 Jul 2010
 

Abstract

This paper addresses information extraction from IKONOS imagery over the Lukole refugee camp in Tanzania. More specific, it describes automatic image analysis procedures for a rapid and reliable identification of refugee tents as well as their spatial extent. From the identified tents, the number of refugees can be derived and a map of the camp can be generated, which can be used for improving refugee camp management. Four information extraction methods have been tested and compared: supervised classification, unsupervised classification, multi-resolution segmentation and mathematical morphology analysis. The latter two procedures based on object-oriented classifiers perform best with a spatial accuracy above 85% and a statistical accuracy above 97%. These methods could be used for refugee camp information extraction in other geographical settings and on imagery with different spatial and spectral resolutions.

Acknowledgments

We would like to thank Mr F. J. Gallego (JRC) for helpful discussions in the early stage of the work and Mr B. Eckhardt (JRC) for the initial processing of the images.

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