Retrieval of Hyperspectral Information from Multispectral Data for Perennial Ryegrass Biomass Estimation
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Arko Lucieer | Lammert Kooistra | Gustavo Togeiro de Alckmin | Richard Rawnsley | Sytze de Bruin | S. Bruin | A. Lucieer | L. Kooistra | R. Rawnsley
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