Data Augmentation Techniques and Transfer Learning Approaches Applied to Facial Expressions Recognition Systems

Enrico Randellini, Leonardo Rigutini, Claudio Saccà
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Abstract

The face expression is the first thing we pay attention to when we want to understand a person’s state of mind. Thus, the ability to recognize facial expressions in an automatic way is a very interesting research field. In this paper, because the small size of available training datasets, we propose a novel data augmentation technique that improves the performances in the recognition task. We apply geometrical transformations and build from scratch GAN models able to generate new synthetic images for each emotion type. Thus, on the augmented datasets we fine tune pretrained convolutional neural networks with different architectures. To measure the generalization ability of the models, we apply extra-database protocol approach, namely we train models on the augmented versions of training dataset and test them on two different databases. The combination of these techniques allows to reach average accuracy values of the order of 85% for the InceptionResNetV2 model.
数据增强技术和迁移学习方法在人脸表情识别系统中的应用
当我们想要了解一个人的心理状态时,面部表情是我们首先要注意的。因此,自动识别面部表情的能力是一个非常有趣的研究领域。本文针对现有训练数据集规模较小的问题,提出了一种新的数据增强技术,提高了识别任务的性能。我们应用几何变换,从零开始构建能够为每种情绪类型生成新的合成图像的GAN模型。因此,在增强数据集上,我们对不同架构的预训练卷积神经网络进行微调。为了衡量模型的泛化能力,我们采用了数据库外协议方法,即在训练数据集的增强版本上训练模型,并在两个不同的数据库上测试模型。这些技术的组合可以使InceptionResNetV2模型达到85%的平均精度值。
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