Fusarium Damaged Kernels Detection Using Transfer Learning on Deep Neural Network Architecture

Nicolau, Márcio, Pimentel, Márcia Barrocas Moreira, Tibola, Casiane Salete, Fernandes, José Mauricio Cunha, Pavan, Willingthon

arXiv.org Machine Learning 

The present work shows the application of transfer learning for a pre-trained deep neural network (DNN), using a small image dataset ($\approx$ 12,000) on a single workstation with enabled NVIDIA GPU card that takes up to 1 hour to complete the training task and archive an overall average accuracy of $94.7\%$. The DNN presents a $20\%$ score of misclassification for an external test dataset. The accuracy of the proposed methodology is equivalent to ones using HSI methodology $(81\%-91\%)$ used for the same task, but with the advantage of being independent on special equipment to classify wheat kernel for FHB symptoms.

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