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Optimal Feature Selection for 3D Facial Expression Recognition with Geometrically Localized Facial Features

机译:几何局部面部特征的3D面部表情识别的最佳特征选择

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The design of a recognition system requires careful attention to pattern representation and classifier design. Some statistical approaches choose these features, in a higher dimensional initial space, which allow sample vectors belonging to different categories to occupy compact and disjoint cluster regions in a lower dimensional subspace. The effectiveness of the subspace is determined by how well samples from different classes can be separated. This paper describes a feature selection process for a pose invariant 3D facial expression recognition method providing a lower dimensional subspace representation, which is optimized to improve the classification accuracy, retrieved from geometrical localization of facial feature points to classify universal facial expressions. Probabilistic neural network architecture is employed as a classifier to recognize the facial expressions from the feature vectors obtained from 3D facial feature locations. Facial expressions such as Neutral, Anger, Disgust, Fear, Happiness, Sadness, and Surprise are successfully recognized with an average recognition rate of 93.72%.
机译:识别系统的设计需要仔细注意模式表示和分类器设计。一些统计方法选择这些特征,在更高于初始空间中,允许属于不同类别的示例向量占据较低维子空间中的紧凑且不相交的群集区域。子空间的有效性由不同类别的样本如何分离。本文介绍了提供较低维子空间表示的姿势不变3D面部表情识别方法的特征选择过程,其优化以提高从面部特征点的几何定位检索到的分类精度来对通用面部表达进行分类。概率神经网络架构被用作分类器,以识别从从3D面部特征位置获得的特征向量的面部表达式。面部表情,如中立,愤怒,厌恶,恐惧,幸福,悲伤和惊喜,平均识别率为93.72%。

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