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An Unsupervised Learning Approach for Facial Expression Recognition using Semi-Definite Programming and Generalized Principal Component Analysis

机译:基于半定规划和广义主成分分析的面部表情识别无监督学习方法

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In this paper, we consider facial expression recognition using an unsupervised learning framework. Specifically, given a data set composed of a number of facial images of the same subject with different facial expressions, the algorithm segments the data set into groups corresponding to different facial expressions. Each facial image can be regarded as a point in a high-dimensional space, and the collection of images of the same subject resides on a manifold within this space. We show that different facial expressions reside on distinct subspaces if the manifold is unfolded. In particular, semi-definite embedding is used to reduce the dimensionality and unfold the manifold of facial images. Next, generalized principal component analysis is used to fit a series of subspaces to the data points and associate each data point to a subspace. Data points that belong to the same subspace are shown to belong to the same facial expression.
机译:在本文中,我们考虑使用无监督学习框架进行面部表情识别。具体地,给定由相同对象的具有不同面部表情的多个面部图像组成的数据集,该算法将数据集分割为与不同面部表情相对应的组。每个面部图像都可以视为高维空间中的一个点,并且同一对象的图像集合位于该空间中的流形上。我们显示,如果流形展开,则不同的面部表情将驻留在不同的子空间上。特别地,使用半定嵌入来减小维数并展开面部图像的流形。接下来,使用广义主成分分析将一系列子空间拟合到数据点,并将每个数据点关联到一个子空间。属于相同子空间的数据点显示为属于相同的面部表情。

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