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A semi-supervised temporal clustering method for facial emotion analysis

机译:一种半监督时间聚类的面部情绪分析方法

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In this paper, we propose a semi-supervised temporal clustering method and apply it to the complex problem of facial emotion categorization. The proposed method, which uses a mechanism to add side information based on the semi-supervised kernel k-means framework, is an extension of the temporal clustering algorithm Aligned Cluster Analysis (ACA). We show that simply adding a small amount of soft constraints, in the form of must-link and cannot-link, improves the overall accuracy of the state-of-the-art method, ACA without adding any extra computational complexity. The results on the non-posed database VAM corpus for three different emotion primitives (valence, dominance, and activation) show improvements compared to the original approach.
机译:在本文中,我们提出了一种半监督的时间聚类方法,并将其应用于面部情感分类的复杂问题。该方法采用基于半监督内核k均值框架的边信息添加机制,是对时间聚类算法比对聚类分析(ACA)的扩展。我们表明,简单地添加少量软约束(以必须链接和不能链接的形式),可以提高最新方法ACA的总体准确性,而不会增加任何额外的计算复杂性。与原始方法相比,在无姿势数据库VAM语料库上针对三种不同情感原语(价,优势和激活)的结果显示出了改进。

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