Facial expressions are a form of non-verbal communication that humans perform seamlessly for meaningful transfer of information. Most of the literature addresses the facial expression recognition aspect however, with the advent of Generative Models, it has become possible to explore the affect space in addition to mere classification of a set of expressions. In this article, we propose a generative model architecture which robustly generates a set of facial expressions for multiple character identities and explores the possibilities of generating complex expressions by combining the simple ones.
翻译:面部表达式是人类为了有意义地传递信息而无缝地进行非语言交流的一种形式,大多数文献涉及面部表达式识别方面,然而,随着创世模型的出现,除了仅仅对一组表达式进行分类外,还有可能探索影响空间。在本条中,我们建议了一种基因化模型结构,为多个字符特性强有力地生成一套面部表达式,并探索通过将简单表达式结合起来产生复杂表达式的可能性。