个性化面部情绪识别的无监督域自适应

Gloria Zen, E. Sangineto, E. Ricci, N. Sebe
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引用次数: 48

摘要

人类表达情感的方式取决于他们特定的个性和文化背景。因此,独立于人的面部表情分类器通常无法准确识别不同个体之间的不同情绪。另一方面,为每个新用户训练一个特定于个人的分类器是一项耗时的活动,需要收集数百个标记样本。在本文中,我们提出了一种个性化方法,其中只需要未标记的目标特定数据。该方法基于我们之前的论文[20],其中提出了一个回归框架来学习用户特定样本分布与其分类器参数之间的关系。一旦学习了这种关系,就可以仅使用新用户的样本分布来构建目标分类器来传递个性化参数。相对于[20],本文的新颖之处在于引入了一种基于源分类器的支持向量来表示源样本分布的新方法。此外,我们在这里提出了一个简化的回归框架,它可以达到与[20]相同甚至略优于[20]的实验结果,但它更容易复制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Domain Adaptation for Personalized Facial Emotion Recognition
The way in which human beings express emotions depends on their specific personality and cultural background. As a consequence, person independent facial expression classifiers usually fail to accurately recognize emotions which vary between different individuals. On the other hand, training a person-specific classifier for each new user is a time consuming activity which involves collecting hundreds of labeled samples. In this paper we present a personalization approach in which only unlabeled target-specific data are required. The method is based on our previous paper [20] in which a regression framework is proposed to learn the relation between the user's specific sample distribution and the parameters of her/his classifier. Once this relation is learned, a target classifier can be constructed using only the new user's sample distribution to transfer the personalized parameters. The novelty of this paper with respect to [20] is the introduction of a new method to represent the source sample distribution based on using only the Support Vectors of the source classifiers. Moreover, we present here a simplified regression framework which achieves the same or even slightly superior experimental results with respect to [20] but it is much easier to reproduce.
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