Deep learning architectures for semantic segmentation and automatic estimation of severity of foliar symptoms caused by diseases or pests

Biosystems Engineering - Tập 210 - Trang 129-142 - 2021
Juliano P. Gonçalves1, Francisco A.C. Pinto1, Daniel M. Queiroz1, Flora M.M. Villar1, Jayme G.A. Barbedo2, Emerson M. Del Ponte3
1Departamento de Engenharia Agrícola, Universidade Federal de Viçosa, 36570-900, Viçosa, MG, Brazil
2Embrapa Informática Agropecuária, 13083-886, Campinas, SP, Brazil
3Departamento de Fitopatologia, Universidade Federal de Viçosa, 36570-900 Viçosa, MG, Brazil

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