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Facial Expression Recognition from Image Sequences Based on Feature Points and Canonical Correlations

机译:基于特征点和典范相关性的图像序列人脸表情识别

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In this paper, we present a framework to recognize facial expressions from image sequences. Our method uses optical flow to track feature points in sequential facial frames, and computes normalized displacements of key feature points and certain standardized geometric distances to form a matrix, called facial-expression-arising-dataset (FEAD). Each FEAD represents an expression image sequence (from neutral to peak). We use canonical correlations to classify an FEAD into one of the six basic facial expressions, and utilize a linear discriminant function to optimize the learning and recognition process. Our method formulates the facial expression recognition as data sets matching problem to fully utilize the dynamic information in expression emerging process, and achieves a recognition accuracy of beyond 90%. Experimental results demonstrate the robustness and effectiveness of this method.
机译:在本文中,我们提出了一个从图像序列中识别面部表情的框架。我们的方法使用光流来跟踪连续面部框架中的特征点,并计算关键特征点的标准化位移和某些标准化的几何距离,以形成一个矩阵,称为面部表情提升数据集(FEAD)。每个FEAD代表一个表达图像序列(从中性到峰值)。我们使用规范相关性将FEAD归类为六个基本面部表情之一,并利用线性判别函数优化学习和识别过程。我们的方法将面部表情识别表达为数据集匹配问题,以在表情出现过程中充分利用动态信息,并实现超过90%的识别精度。实验结果证明了该方法的鲁棒性和有效性。

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