Enhanced Automated Canopy Characterization from Hyperspectral Data by a Novel Two Step Radiative Transfer Model Inversion Approach
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Richard Bamler | Frédéric Baret | Wouter Dorigo | Wolfgang Wagner | Rudolf Richter | R. Richter | F. Baret | W. Wagner | W. Dorigo | R. Bamler
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