Intercomparison of Unmanned Aerial Vehicle and Ground-Based Narrow Band Spectrometers Applied to Crop Trait Monitoring in Organic Potato Production
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Marston Héracles Domingues Franceschini | Juha Suomalainen | Lammert Kooistra | Harm M. Bartholomeus | Dirk van Apeldoorn | J. Suomalainen | L. Kooistra | H. Bartholomeus | D. Apeldoorn | M. H. Franceschini
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