An approach for facial expression classification

Ali Muhamed Ali, H. Zhuang, Ali K. Ibrahim
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引用次数: 16

Abstract

In this paper, a new method for facial expression classification is proposed, which uses the histograms of oriented gradients (HOG) algorithm to extract facial expression features and the sparse representation classifier (SRC) to classify facial expressions with a large variation of poses. The HOG algorithm was selected due to its effectiveness in picking up both local and global facial expression features in different orientations and scales, and the SRC was chosen because of its proven effectiveness in face recognition. A novelty of the proposed approach is that given a facial image for classification, its pose is determined first to select a pose-dependent dictionary for the SRC procedure. The paper also discusses ways of selecting parameters for improving the effectiveness of the HOG algorithm. The proposed method was applied to two multi-pose facial expression databases and satisfactory results were obtained for the majority of facial expressions under various poses.
一种面部表情分类方法
本文提出了一种新的面部表情分类方法,利用定向梯度直方图(HOG)算法提取面部表情特征,利用稀疏表示分类器(SRC)对姿态变化较大的面部表情进行分类。选择HOG算法是因为它可以有效地提取不同方向和尺度下的局部和全局面部表情特征,而选择SRC算法是因为它在人脸识别中已经证明了它的有效性。该方法的一个新颖之处在于,给定用于分类的面部图像,首先确定其姿势,为SRC过程选择一个姿势相关的字典。本文还讨论了提高HOG算法有效性的参数选择方法。将该方法应用于两个多姿态面部表情数据库,对不同姿态下的大多数面部表情都获得了满意的结果。
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