FAO AGRIS - Sistema Internacional para la Ciencia y Tecnología Agrícola

Spring wheat trait prediction using combined multi-environment, weather and multispectral timeseries UAV data

2021

Ijaz, Muhammad Fahad


Información bibliográfica
Editorial
Norwegian University of Life Sciences, Ås
Otras materias
Virtual phenomics; Agronimic; Composite trapezoidal rule; Lasso; Vdp::technology: 500; Gradient boosting; Staur; Htpp; Unmanned aerial vehicle; Area under the curve; Simpsons rule; Area under curve; Hyperspectral; Multispectral; Masbasis; Htp; Regression; Simpson; Vdp::agriculture and fishery disciplines: 900; Uav remote sensing; Linear regression; Data science; Dji; Graminor; Uav; Grain yield; Auc; Yield; Regressor; Vdp::mathematics and natural science: 400; Random forest; Vpheno
Idioma
Inglés
Licencia
Attribution-NonCommercial-NoDerivatives 4.0 Internasjonal. http://creativecommons.org/licenses/by-nc-nd/4.0/deed.no
Tipo
Master Thesis; Thesis; Master's Thesis
Autores corporativos
Burud, Ingunn
Shafiee, Sahameh

2022-05-15
AGRIS AP
Proveedor de Datos
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