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A Comparative Study of Facial Emotion Classification

机译:面部情绪分类的比较研究

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Face plays an important role in communication so automatic recognition of facial emotion is an important addition to computer vision research. This paper presents a comparative study of two types of approaches to facial emotion classification on single images. Gabor wavelets is the technique we employ here to extract features from upper face and lower face. Linear discriminant function (LDF) is applied first for classification. In this type, we compare principle component analysis (PCA) and Fisher linear discriminant (FLD). In the second type of neural network, we focus on multi-layer perceptron (MLP), where single big MLP and multiple MLP classifier are compared. The experimental results show PCA outperforms FLD, and multiple MLPs classifier beats single big MLP. In addition, it is also indicated that Gabor coefficients at high frequency and vertical orientation may contain more information about facial emotion.
机译:面部表情在交流中起着重要作用,因此自动识别面部表情是计算机视觉研究的重要补充。本文对两种在单幅图像上进行面部情感分类的方法进行了比较研究。 Gabor小波是我们在此处采用的从上表面和下表面提取特征的技术。线性判别函数(LDF)首先用于分类。在这种类型中,我们比较主成分分析(PCA)和Fisher线性判别式(FLD)。在第二种神经网络中,我们集中在多层感知器(MLP)上,其中比较了单个大MLP和多个MLP分类器。实验结果表明,PCA的性能优于FLD,多个MLP分类器胜过单个大型MLP。此外,还表明,高频和垂直方向的Gabor系数可能包含有关面部情感的更多信息。

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