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

机译:深度转移学习初步研究应用于小型数据集的图像分类

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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.
机译:基于8层卷积神经网络,提出了一种新的转移学习策略,在这项工作中进行了图像分类。 转移学习过程包括在图像的源数据集上的神经网络的训练阶段。 然后,使用不同的图像的不同小目标数据集再培训最后两层。 进行了初步研究,以培训和测试疟疾细胞图像转移学习提案以进行二进制分类问题。 该方法拟议为关于其他三种不同培训的培训非转移学习模型的策略提供了6.76%的改善。 取得的成果非常有前途,并鼓励在这一领域进行进一步的研究。

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