A Comparative Estimation of Maize Leaf Water Content Using Machine Learning Techniques and Unmanned Aerial Vehicle (UAV)-Based Proximal and Remotely Sensed Data
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Onisimo Mutanga | John Odindi | Tafadzwanashe Mabhaudhi | Mbulisi Sibanda | Vimbayi G. P. Chimonyo | Helen S. Ndlovu | Alistair Clulow | O. Mutanga | J. Odindi | V. Chimonyo | A. Clulow | M. Sibanda | T. Mabhaudhi | H. Ndlovu | Mbulisi Sibanda
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