Importance of Remotely-Sensed Vegetation Variables for Predicting the Spatial Distribution of African Citrus Triozid (Trioza erytreae) in Kenya
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Elfatih M. Abdel-Rahman | Tobias Landmann | Richard Kyalo | Samira A. Mohamed | Sunday Ekesi | Christian Borgemeister | E. Abdel-Rahman | C. Borgemeister | T. Landmann | S. Ekesi | S. Mohamed | R. Kyalo
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