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Recognition and intensity estimation of facial expression using ensemble classifiers

机译:使用集成分类器的面部表情识别和强度估计

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Facial expression recognition (FER) has been widely studied since it can be used for various applications. However, most of FER techniques focus on discriminating typical facial expressions such as six basic facial expressions. Spontaneous facial expressions are not limited to such typical ones because the intensity of a facial expression varies depending on the intensity of an emotion. In order to utilize FER for real-world applications, therefore, it is necessary to discriminate slight difference of facial expressions. In this paper, we propose an effective FER method to recognize spontaneous facial expressions using ensemble learning which combines a number of naive Bayes classifiers. In addition, a method to estimate the intensity of facial expression is also proposed by using the classification results of the classifiers. The effectiveness of these methods are evaluated through an FER experiment and an experiment to estimate the intensity of facial expressions using a data set including spontaneous facial expressions.
机译:面部表情识别(FER)已被广泛研究,因为它可用于各种应用程序。但是,大多数FER技术都专注于区分典型的面部表情,例如六个基本的面部表情。自发的面部表情不限于这种典型的表情,因为面部表情的强度根据情感的强度而变化。因此,为了在实际应用中利用FER,有必要区分面部表情的细微差别。在本文中,我们提出了一种有效的FER方法,该方法使用结合了许多朴素贝叶斯分类器的集成学习来识别自发的面部表情。另外,还提出了一种利用分类器的分类结果来估计面部表情强度的方法。通过FER实验和使用包括自发面部表情的数据集估算面部表情强度的实验来评估这些方法的有效性。

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