Multi-pose facial expression recognition using rectangular HOG feature extractor and label-consistent KSVD classifier

Ali Muhamed Ali, H. Zhuang, Ali K. Ibrahim
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引用次数: 1

Abstract

In this paper, a new approach to the classification of facial expressions from multiple pose images is proposed. In this approach, a rectangular histogram of oriented gradient (R-HOG) algorithm is first designed to extract features of face images. The parameters of the R-HOG algorithm, which is a modification of the original HOG algorithm include cell shape, cell size, block size, and the number of orientation bins. The R-HOG is capable of capturing more discriminative texture features of different facial expressions. In addition, a supervised dictionary learning classifier, the label-consistent K-SVD (LC-KSVD) algorithm, is adopted to recognise the facial expression of the subject. To investigate its effectiveness, the proposed technique was applied to classify emotional states of the face images in the two public available facial expression datasets: KDFE and RafD. The experiment study showed that the new method outperformed in many aspects those methods reported in the literature tested with the same datasets. First, the new method handles pose variations better. Second, it is more robust in cases where the size of a training dataset is small. Finally, it's accuracy performance is more consistent measured by standard deviations.
基于矩形HOG特征提取器和标签一致KSVD分类器的多姿态面部表情识别
本文提出了一种基于多姿态图像的面部表情分类新方法。该方法首先设计了一种定向梯度矩形直方图(R-HOG)算法来提取人脸图像的特征。R-HOG算法是对原HOG算法的改进,其参数包括细胞形状、细胞大小、块大小和方向箱数量。R-HOG能够捕捉到更多不同面部表情的纹理特征。此外,采用有监督的字典学习分类器,即标签一致K-SVD (LC-KSVD)算法来识别受试者的面部表情。为了验证该方法的有效性,将该方法应用于两个公开可用的面部表情数据集:KDFE和RafD中的面部图像情绪状态分类。实验研究表明,新方法在许多方面优于文献中使用相同数据集测试的方法。首先,新方法能更好地处理姿势变化。其次,在训练数据集规模较小的情况下,它更具鲁棒性。最后,用标准差来衡量,其精度表现更加一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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