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The structure of a typical Deep Learning model.

The structure of a typical Deep Learning model.

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This research studies a method to classify the tomatoes’ maturity by using deep transfer learning techniques. We carry out sorting systems adopting three pre-trained convolutional neural networks of VGG16, VGG19, and ResNet101. The experimental results show that the VGG19 model obtains a high precision on both the train set and the test set.

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... Neural Networks (CNNs) are some types of Deep Learning (DL) models. The fundamental structure of DL model is illustrated in Figure 2. Here, the input the input í µí²™ = [í µí²™ í µí¿ , í µí²™ í µí¿ , . . ...

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