Assessing the Potential of Sentinel-2 and Pléiades Data for the Detection of Prosopis and Vachellia spp. in Kenya
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Clement Atzberger | Markus Immitzer | Wai-Tim Ng | Purity Rima | Kathrin Einzmann | Sandra Eckert | C. Atzberger | Markus Immitzer | S. Eckert | Wai-Tim Ng | K. Einzmann | P. Rima
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