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Integration of geometric and dynamic features for facial expression recognition in color image sequences

机译:整合几何和动态特征以在彩色图像序列中识别面部表情

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This work proposes a new approach for facial expression recognition in color image sequences, based on integrated evaluation of geometric and dynamic features. For this purpose a series of methods is introduced that on the one hand achieve high recognition rates for expressive facial behavior and on the other hand address a couple of common problems in this area of research. In particular we apply physiologically motivated image regions for the detection of dynamic features by using an optical flow method. In this way dynamic features capture the variations caused by facial expression changes. Opposed, geometric features do not contain temporal information but describe spatial feature parameters. These correspond to 3-D based Euclidean distances and angles. Particularly, the hypothesis of this work is that through integrated evaluation of geometric and dynamic features, improved recognition rates can be achieved. Based on comprehensive experimental investigations we show the advantage of the suggested approach.
机译:这项工作基于对几何和动态特征的综合评估,提出了一种在彩色图像序列中进行面部表情识别的新方法。为此目的,引入了一系列方法,这些方法一方面实现了表情面部行为的高识别率,另一方面解决了该研究领域中的两个常见问题。特别是,我们通过使用光流方法将生理动机图像区域应用于动态特征检测。以这种方式,动态特征捕获了由面部表情变化引起的变化。相反,几何特征不包含时间信息,而是描述空间特征参数。这些对应于基于3D的欧几里得距离和角度。特别是,这项工作的假设是,通过对几何和动态特征进行综合评估,可以提高识别率。基于全面的实验研究,我们证明了建议方法的优势。

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