Facial micro-expressions recognition has attracted much attention recently. Micro-expressions have the characteristics of short duration and low intensity, and it is difficult to train a high-performance classifier with the limited number of existing micro-expressions. Therefore, recognizing micro-expressions is a challenge task. In this paper, we propose a micro-expression recognition method based on attribute information embedding and cross-modal contrastive learning. We use 3D CNN to extract RGB features and FLOW features of micro-expression sequences and fuse them, and use BERT network to extract text information in Facial Action Coding System. Through cross-modal contrastive loss, we embed attribute information in the visual network, thereby improving the representation ability of micro-expression recognition in the case of limited samples. We conduct extensive experiments in CASME II and MMEW databases, and the accuracy is 77.82% and 71.04%, respectively. The comparative experiments show that this method has better recognition effect than other methods for micro-expression recognition.
翻译:显微表情的识别最近引起许多注意。微表情具有短时间和低强度的特点,很难以有限的现有微表情来训练高性能分类员。因此,承认微表情是一项艰巨的任务。在本文中,我们提议了基于属性信息嵌入和交叉模式对比学习的微表情识别方法。我们使用3DCNN来提取微表情序列的RGB特征和FLOW特征并结合它们,并使用BERT网络在法西行动coding系统中提取文本信息。通过跨式对比损失,我们将属性信息嵌入视觉网络,从而提高有限样本中微表情识别的代表性能力。我们在CASME II和MMEW数据库中进行了广泛的实验,精确度分别为77.82%和71.04%。比较实验表明,这一方法比其他微表态识别方法具有更好的识别效果。