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Facial expression recognition using tracked facial actions: Classifier performance analysis

机译:使用跟踪的面部动作进行面部表情识别:分类器性能分析

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摘要

In this paper, we address the analysis and recognition of facial expressions in continuous videos. More precisely, we study classifiers performance that exploit head pose independent temporal facial action parameters. These are provided by an appearance-based 3D face tracker that simultaneously provides the 3D head pose and facial actions. The use of such tracker makes the recognition pose- and texture-independent. Two different schemes are studied. The first scheme adopts a dynamic time warping technique for recognizing expressions where training data are given by temporal signatures associated with different universal facial expressions. The second scheme models temporal signatures associated with facial actions with fixed length feature vectors (observations), and uses some machine learning algorithms in order to recognize the displayed expression. Experiments quantified the performance of different schemes. These were carried out on CMU video sequences and home-made video sequences. The results show that the use of dimension reduction techniques on the extracted time series can improve the classification performance. Moreover, these experiments show that the best recognition rate can be above 90%.
机译:在本文中,我们致力于分析和识别连续视频中的面部表情。更精确地,我们研究利用头部姿势独立的临时面部面部动作参数的分类器性能。这些由基于外观的3D面部跟踪器提供,该跟踪器同时提供3D头部姿势和面部动作。这种跟踪器的使用使识别与姿势和纹理无关。研究了两种不同的方案。第一种方案采用动态时间规整技术来识别表情,其中训练数据是由与不同通用面部表情相关的时间签名给出的。第二种方案使用固定长度的特征向量(观察值)对与面部动作相关的时间签名进行建模,并使用一些机器学习算法来识别显示的表情。实验量化了不同方案的性能。这些是在CMU视频序列和自制视频序列上执行的。结果表明,在提取的时间序列上使用降维技术可以提高分类性能。而且,这些实验表明,最佳识别率可以达到90%以上。

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