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Facial-component-based Bag of Words and PHOG Descriptor for Facial Expression Recognition

机译:基于面部组成的基于组件的单词和Phog描述符,用于面部表情识别

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A novel framework of facial appearance and shape information extraction for facial expression recognition is proposed. For appearance extraction, a facial-component-based bag of words method is presented. We segment face images into 4 component regions, and sub-divide them into 4×4 sub-regions. Dense SIFT (Scale-Invariant Feature Transform) features are calculated over the sub-regions and vector quantized into 4×4 sets of codeword distributions. For shape extraction, PHOG (Pyramid Histogram of Orientated Gradient) descriptors are computed on the 4 facial component regions to obtain the spatial distribution of edges. Our framework provides holistic characteristics for the local texture and shape features by enhancing the structure-based spatial information, and makes the local descriptors be possible to be used in facial expression recognition for the first time. The recognition rate achieved by the fusion of appearance and shape features at decision level using the Cohn-Kanade database is 96.33%, which outperforms the state of the arts.
机译:提出了一种新颖的面部外观和形状信息提取框架,用于面部表情识别。对于外观提取,提出了一种基于面部组件的单词方法方法。将面部图像分段为4个组分区域,并将它们分成4×4个子区域。在子区域和向量中计算致密的SIFT(尺度不变特征变换)特征,将量为4×4组码字分布。对于形状提取,在4个面部部件区域上计算PHOG(定向梯度的金字塔直方图)描述符以获得边缘的空间分布。我们的框架通过增强基于结构的空间信息,为局部纹理和形状特征提供整体特征,并使本地描述符成为第一次在面部表情识别中使用。通过Cohn-Kanade数据库融合在决策水平下的外观和形状特征融合所达到的识别率为96.33%,这优于现有技术。

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