面部表情分析的深度域自适应

Nikolai Kalischek, Patrick Thiam, Peter Bellmann, F. Schwenker
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引用次数: 5

摘要

在过去的几年里,深度学习在各个领域引起了很多关注,包括面部表情识别。然而,将深度学习技术应用于面部表情识别并不简单。成功的深度表情识别系统有几个缺点。除了缺乏足够的训练数据外,面部表情还传达了人与人之间的各种形态和特征差异。因此,表情识别网络经常存在过拟合和泛化缺失的问题。然而,已经提出了多种学习技术,通常称为领域适应,以解决缺乏足够的数据和缺失方差的问题。因此,面部表情识别可能受益于领域自适应。在本文中,我们评估了深度域自适应在面部表情识别中的适用性。我们描述了两个领域自适应框架,一个用于单帧面部表情分析,一个用于基于自集成方法的基于序列的面部表情分析,该方法在[1]中定义。前者在CK+数据集[2],[3]上进行评估,后者在乌尔姆大学的SenseEmotion数据库[4]上进行评估。我们的研究结果表明,领域自适应主要适用于个体特征的面部表情识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Domain Adaptation for Facial Expression Analysis
Deep learning has attracted a lot of attention in various fields over the past few years, including facial expression recognition. However, applying deep learning techniques to facial expression recognition is not straightforward. There are several drawbacks for successful deep expression recognition systems. Besides the lack of sufficient training data, facial expressions convey various inter-personal morphological and character differences. Therefore, an expression recognition network often suffers from overfitting and missing generalizability. However, multiple learning techniques, generally known as domain adaptation, have been proposed to address the lack of sufficient data and missing variance. Consequently, facial expression recognition may profit from domain adaptation. In this paper, we evaluate the applicability of deep domain adaptation for facial expression recognition. We describe two domain adaptation frameworks, one for single frame facial expression analysis and one for sequence-based facial expression analysis based on the Self-Ensembling method defined in [1]. The former is evaluated on the CK+ dataset [2], [3], the latter on the SenseEmotion database [4] of the University of Ulm. Our results indicate that domain adaptation is mostly applicable for person-specific facial expression recognition.
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