Applying RGB- and Thermal-Based Vegetation Indices from UAVs for High-Throughput Field Phenotyping of Drought Tolerance in Forage Grasses
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Kathy Steppe | Wouter H. Maes | Peter Lootens | Tom De Swaef | Jonas Aper | Joost Baert | Mathias Cougnon | Dirk Reheul | Isabel Roldán-Ruiz | D. Reheul | P. Lootens | I. Roldán‐Ruiz | W. Maes | K. Steppe | M. Cougnon | J. Baert | J. Aper | T. D. Swaef
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