Spatial characterization of bark beetle infestations by a multidate synergy of SPOT and Landsat imagery
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Stefan Dech | Hooman Latifi | S. Dech | M. Kautz | H. Latifi | Bastian Schumann | B. Schumann | Markus Kautz | Hooman Latifi
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