Emotion recognition and understanding is a vital component in human-machine interaction. Dimensional models of affect such as those using valence and arousal have advantages over traditional categorical ones due to the complexity of emotional states in humans. However, dimensional emotion annotations are difficult and expensive to collect, therefore they are not as prevalent in the affective computing community. To address these issues, we propose a method to generate synthetic images from existing categorical emotion datasets using face morphing as well as dimensional labels in the circumplex space with full control over the resulting sample distribution, while achieving augmentation factors of at least 20x or more.
翻译:情感认识和理解是人与机器互动的重要组成部分。由于人类情感状态的复杂性,诸如使用价值和觉醒作用等影响层面模型比传统的绝对模型具有优势。然而,由于人情感状态的复杂性,维度情感说明很难收集,而且费用昂贵,因此在感官计算界并不普遍。为了解决这些问题,我们提出了一个方法,用面貌变形和在环圆空间的维格标签来生成现有直线情感数据集的合成图像,充分控制由此形成的样本分布,同时达到至少20x或以上增殖系数。