Transfer Learning for Binary Classification of Thermal Images
Main Article Content
Abstract
Keywords
fine-tuning, Friedman test, pre-training, thermal images, transfer learning imágenes térmicas, fine-tuning, preentrenamiento, test de Friedman, transfer learning
References
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