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A semi-automated object-oriented model for burned area mapping in the Mediterranean region using Landsat-TM imagery

G. H. Mitri A C and I. Z. Gitas B
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A Department of Environmental Management, Mediterranean Agronomic Institute of Chania, Crete, Greece.

B Laboratory of Forest Management and Remote Sensing, Aristotle University of Thessaloniki, Greece. Telephone: +30 2310 992699; fax: +30 2310 998797; email: igitas@for.auth.gr

C Corresponding author. Telephone: +30 2310 992688; fax: +30 2310 998897; email: gmitri@for.auth.gr

International Journal of Wildland Fire 13(3) 367-376 https://doi.org/10.1071/WF03079
Submitted: 30 December 2003  Accepted: 21 May 2004   Published: 16 November 2004



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