A comparative estimation of maize leaf water content using machine learning techniques and unmanned aerial vehicle (UAV)-based proximal and remotely sensed data
Tipo:
Título:
A comparative estimation of maize leaf water content using machine learning techniques and unmanned aerial vehicle (UAV)-based proximal and remotely sensed data
Creador/a:
Ndlovu, H.S.;
Odindi, J.;
Sibanda, M.;
Mutanga, O.;
Clulow, A.D.;
Chimonyo, V.G.P.;
Mabhaudhi, T.
Odindi, J.;
Sibanda, M.;
Mutanga, O.;
Clulow, A.D.;
Chimonyo, V.G.P.;
Mabhaudhi, T.
Año:
2021
Copyright:
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Revista:
Remote Sensing
Volumen de la Revista:
13
No de Revista:
20
Número de artículo:
4091
DOI:
Lugar de publicación:
Basel (Switzerland)
Editor:
MDPI
Cita:
A comparative estimation of maize leaf water content using machine learning techniques and unmanned aerial vehicle (UAV)-based proximal and remotely sensed data. 2021. 13 (20) DOI: 10.3390/rs13204091 MDPI.