Convolutional neural networks ResNet-50 for weevil detection in corn kernels
Iván Alberto Analuisa Aroca,
Arnaldo Vergara-Romero,
Iris Betzaida Pérez Almeida
Abstract:The article explores the use of convolutional neural networks, specifically ResNet-50, to detect weevils in corn kernels. Weevils are a major pest of stored maize and can cause significant yield and quality losses. The study found that the ResNet-50 model was able to distinguish with high precision between weevil-infested corn kernels and healthy kernels, achieving values of 0.9464 for precision, 0.9310 for sensitivity, 0.9630 for specificity, 0.9469 for quality index, 0.9470 for the area under the curve (AU… Show more
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