Identification of banana fusarium wilt using supervised classification algorithms with UAV-based multi-spectral imagery
Abstract
Keywords: banana fusarium wilt, UAV-based multi-spectral remote sensing, support vector machine, artificial neural network, random forest
DOI: 10.25165/j.ijabe.20201303.5524
Citation: Ye H C, Huang W J, Huang S Y, Cui B, Dong Y Y, Guo A T, et al. Identification of banana fusarium wilt using supervised classification algorithms with UAV-based multi-spectral imagery. Int J Agric & Biol Eng, 2020; 13(3): 136–142.
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