Facial affect analysis (FAA) using visual signals is a key step in human-computer interactions. Previous methods mainly focus on extracting appearance and geometry features associated with human affects. However, they do not consider the latent semantic information among each individual facial change, leading to limited performance and generalization. Recent trends attempt to establish a graph-based representation to model these semantic relationships and develop learning framework to leverage it for different FAA tasks. In this paper, we provide a comprehensive review of graph-based FAA, including the evolution of algorithms and their applications. First, we introduce the background knowledge of affect analysis, especially on the role of graph. We then discuss approaches that are widely used for graph-based affective representation in literatures and show a trend towards graph construction. For the relational reasoning in graph-based FAA, we classify existing studies according to their usage of traditional methods or deep models, with a special emphasis on latest graph neural networks. Experimental comparisons of the state-of-the-art on standard FAA problems are also summarized. Finally, we extend the review to the current challenges and potential directions. As far as we know, this is the first survey of graph-based FAA methods, and our findings can serve as a reference point for future research in this field.
翻译:使用视觉信号的表面影响分析(FAA)是人类-计算机相互作用的一个关键步骤。以前的方法主要侧重于提取外观和与人类影响有关的几何特征。然而,它们并不考虑每个面部变化之间潜在的语义信息,导致绩效和概括性有限。最近的趋势试图建立基于图表的表述方式,以模拟这些语义关系,并开发学习框架,以利用这些语义关系来进行FAA的不同任务。在本文件中,我们对基于图表的FAA进行全面审查,包括算法及其应用的演变。首先,我们介绍影响分析的背景知识,特别是图表的作用。我们然后讨论在文献中广泛用于基于图表的影响力表述的方法,并显示图形结构的形成趋势。关于基于图表的推理,我们根据使用传统方法或深层模型进行分类现有研究,特别侧重于最新的图形神经网络。对标准 FAAA问题的当前艺术状况及其应用的实验性比较。最后,我们将审查扩大到当前的挑战和潜在方向。我们知道的实地调查方法可以作为实地调查的参考。