论文标题
中层表示增强和图形嵌入不确定性抑制面部表达识别
Mid-level Representation Enhancement and Graph Embedded Uncertainty Suppressing for Facial Expression Recognition
论文作者
论文摘要
面部表达是传达人类情绪状态和意图的重要因素。尽管在面部表达识别任务(FER)任务中已经取得了显着进步,但由于表达模式的巨大变化和不可避免的数据不确定性而引起的挑战仍然存在。在本文中,我们提出了中级表示增强(MRE)和嵌入图形抑制(GUS)的图表,以解决这些问题。一方面,引入MRE是为了避免表达表示学习以有限数量的高度歧视模式主导。另一方面,引入GUS以抑制表示空间中的特征歧义。所提出的方法不仅具有更强的概括能力来处理表达模式的不同变化,还具有更强的稳健性来捕获表达表示。对AFF-WILD2的实验评估已验证了该方法的有效性。
Facial expression is an essential factor in conveying human emotional states and intentions. Although remarkable advancement has been made in facial expression recognition (FER) task, challenges due to large variations of expression patterns and unavoidable data uncertainties still remain. In this paper, we propose mid-level representation enhancement (MRE) and graph embedded uncertainty suppressing (GUS) addressing these issues. On one hand, MRE is introduced to avoid expression representation learning being dominated by a limited number of highly discriminative patterns. On the other hand, GUS is introduced to suppress the feature ambiguity in the representation space. The proposed method not only has stronger generalization capability to handle different variations of expression patterns but also more robustness to capture expression representations. Experimental evaluation on Aff-Wild2 have verified the effectiveness of the proposed method.