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Resumen de A Preliminary Study on Deep Transfer Learning Applied to Image Classification for Small Datasets

Miguel Ángel Molina, Gualberto Asencio Cortés Árbol académico, José Cristobal Riquelme Santos Árbol académico, Francisco Martínez-Álvarez Árbol académico

  • A new transfer learning strategy is proposed for image classification in this work, based on an 8-layer convolutional neural network. The transfer learning process consists in a training phase of the neural network on a source dataset of images. Then, the last two layers are retrained using a different small target dataset of images. A preliminary study was conducted to train and test the transfer learning proposal on Malaria cell images for a binary classification problem. The methodology proposed has provided a 6.76% of improvement with respect to other three different strategies of training non-transfer learning models. The results achieved are quite promising and encourage to conduct further research in this field.


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