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A novel approach to classification of facial expressions from 3D-mesh datasets using modified PCA

机译:使用改进的PCA从3D网格数据集中的面部表情分类的新方法

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摘要

We propose a novel approach to human facial expression recognition using only the shape information at a finite set of fiducial points, extracted from the 3D neutral and expressive faces. In the course of applying the technique to the facial database, BU-3DFE, which contains facial shape and 2D color ("texture") information, we extract from the images of neutral and expressive faces, salient contours in the facial interest-regions around the eyebrows, eyes, nose and mouth by invoking an active contour algorithm. The contours are then uniformly sampled and mapped onto the 3D-mesh dataset in order to generate a shape (and color) description of the interest-regions. By a matrix-algebraic operation on the shape of the neutral and expressive faces, a shape feature-matrix is computed for each expression and for each person, which is then subjected to the proposed modified PCA approach to recognize expressions.rnClassification results are presented to demonstrate the effectiveness of the proposed approach. It is also found that accuracy estimates compare favorably with those in the literature on facial expression recognition from 3D-mesh datasets.
机译:我们提出了一种新颖的方法来进行人脸表情识别,该方法仅使用从3D中性和表情面孔中提取的有限基准点集上的形状信息。在将该技术应用于包含脸部形状和2D颜色(“纹理”)信息的脸部数据库BU-3DFE的过程中,我们从中性和富有表情的脸部图像,周围脸部兴趣区域中的显着轮廓提取图像通过调用主动轮廓算法来眉毛,眼睛,鼻子和嘴巴。然后,轮廓将被均匀采样并映射到3D网格数据集上,以生成感兴趣区域的形状(和颜色)描述。通过对中性和表情面的形状进行矩阵代数运算,为每个表达式和每个人计算一个形状特征矩阵,然后对其进行改进的PCA方法以识别表达式。证明所提出方法的有效性。还发现,准确度估计值与文献中有关3D网格数据集的面部表情识别的估计值相比具有优势。

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