2023
DOI: 10.17268/sci.agropecu.2023.034
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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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