Identificação de solo exposto e cupinzeiros em pastagens utilizando deep learning.
Identificação de solo exposto e cupinzeiros em pastagens utilizando deep learning.
Author(s): ALMEIDA, I. P.; FERNANDES, A.; PARREIRA, W. D.; OLIVEIRA, M. F. de; GUCKERT, K. S.; COELHO, D. K.
Summary: Pasture degradation is a significant challenge in livestock farming in Brazil, affecting the environmental and economic sustainability of the sector. Solutions that help manage pasture areas are crucial for Brazilian agribusiness. In this context, this work presents the application of YOLO model of Deep Learning to identify exposed soil, as well as indicators of pasture degradation, in this case, the number of termite mounds in each area. The image base used refers to pastures in Goiás and Mato Grosso.
Publication year: 2024
Types of publication: Paper in annals and proceedings
Unit: Embrapa Maize & Sorghum
Keywords: Cupim, Deep Learning, Degradation, Degradação de pastagem, Modelo YOLO, Pastagem, Pastures
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