Improving Biomass and Grain Yield Prediction of Wheat Genotypes on Sodic Soil Using Integrated High-Resolution Multispectral, Hyperspectral, 3D Point Cloud, and Machine Learning Techniques
Malini Roy Choudhury(The University of Queensland), Yash P. Dang(The University of Queensland), Armando Apan(University of Southern Queensland), Sumanta Das(Indian Institute of Technology Guwahati), Neal W. Menzies(The University of Queensland), Jack Christopher(The University of Queensland), Scott Chapman(Commonwealth Scientific and Industrial Research Organisation)
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