Economic Assessment of Fire Damage to Urban Forest in the Wildland-Urban Interface Using Planet Satellites Constellation Images
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David Helman | Itamar M. Lensky | Naama Tessler | Anat Tchetchik | Yaron Michael | Steve Brenner | I. Lensky | D. Helman | Anat Tchetchik | S. Brenner | Naama Tessler | Yaron Michael
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