Facial expression is one of the most external indications of a person's feelings and emotions. In daily conversation, according to the psychologist, only 7% and 38% of information is communicated through words and sounds respective, while up to 55% is through facial expression. It plays an important role in coordinating interpersonal relationships. Ekman and Friesen recognized six essential emotions in the nineteenth century depending on a cross-cultural study, which indicated that people feel each basic emotion in the same fashion despite culture. As a branch of the field of analyzing sentiment, facial expression recognition offers broad application prospects in a variety of domains, including the interaction between humans and computers, healthcare, and behavior monitoring. Therefore, many researchers have devoted themselves to facial expression recognition. In this paper, an effective hybrid data augmentation method is used. This approach is operated on two public datasets, and four benchmark models see some remarkable results.
翻译:面部表达是个人情感和情感的最外部迹象之一。 根据心理学家,在日常对话中,只有7%和38%的信息通过言语和声音相容传递,而高达55%的信息通过面部表达方式传递。在协调人际关系方面,它发挥着重要作用。Ekman和Friesen认识到十九世纪的六种基本情感取决于跨文化研究,该研究表明,尽管文化存在,人们还是以同样的方式感受到了每一种基本情感。作为分析情绪的领域的一个分支,面部表达的识别在各个领域提供了广泛的应用前景,包括人与计算机、医疗保健和行为监测之间的互动。因此,许多研究人员致力于面部表达方式的识别。在本文中,使用了有效的混合数据增强方法。这种方法在两个公共数据集上运行,四个基准模型看到一些显著的结果。