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A novel feature separation model exchange-GAN for facial expression recognition

机译:一种用于面部表情识别的新型特征分离模型Exchange-GaN

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Currently, with the rapid development of deep learning, many breakthroughs have been made in the field of facial expression recognition (FER). However, according to our prior knowledge, facial images contain not only expression-related features but also some identity-related features, and the identity-related features vary from person to person which often have a negative influence on the FER process. It is one of the most important challenges in the field of FER. In this paper, a novel feature separation model exchange-GAN is proposed for the FER task, which can realize the separation of expression-related features and expression-independent features with high purity. And the FER method based on the exchange-GAN can overcome the interference of identity-related features to a large extent. First, the feature separation is achieved by the exchange-GAN through partial feature exchange and various constraints. Then we ignore the expression-independent features, and conduct FER only according to the expression-related features to alleviate the adverse effect of identity-related features. Finally, some experiments are conducted on three famous databases with the FER methods proposed in this paper. The experimental results show that the proposed FER method can alleviate the interference of identity-related information through feature separation by the exchange-GAN and achieve excellent performance for the objects that have not appeared in the training set. What's more, our method can obtain very competitive FER accuracy on the three experimental databases. (C) 2020 Elsevier B.V. All rights reserved.
机译:目前,随着深度学习的快速发展,面部表情识别领域(FER)领域已经制作了许多突破。然而,根据我们的先验知识,面部图像不仅包含与表达相关的特征,而且含有一些与身份相关的特征,而且与人的身份相关的功能因人为对FER过程产生负面影响而异。这是FER领域中最重要的挑战之一。本文提出了一种新颖的特征分离模型Exchange-GaN用于FER任务,可以实现与高纯度的表达相关特征和表达无关的特征的分离。并且基于Exchange-GaN的FER方法可以在很大程度上克服身份相关特征的干扰。首先,通过部分特征交换和各种约束来实现特征分离。然后我们忽略了独立于表达的特征,并仅根据表达式相关的特征进行FER以减轻与身份相关的特征的不利影响。最后,一些实验是在三个着名的数据库上进行了本文提出的FER方法。实验结果表明,建议的FER方法可以通过Exchange-GaN的特征分离来缓解身份相关信息的干扰,并为训练集中出现的物体实现出色的性能。更重要的是,我们的方法可以在三个实验数据库中获得非常竞争力的频率。 (c)2020 Elsevier B.v.保留所有权利。

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