Deep Learning Methods for Recognition of Orchard Crops' Diseases |
Sabitov, Baratbek
(Kyrgyz National University named after I. Arabaev, Department of Applied Informatics)
Biibsunova, Saltanat (Arabaev Kyrgyz State University, Department of Applied Informatics) Kashkaroeva, Altyn (Arabaev Kyrgyz State University, Department of Applied Informatics) Biibosunov, Bolotbek (Arabaev Kyrgyz State University, Department of Applied Informatics) |
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