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Machine learning methods for fully automatic recognition of facial expressions and facial actions

机译:用于面部表情和面部动作的全自动识别的机器学习方法

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We present a systematic comparison of machine learning methods applied to the problem of fully automatic recognition of facial expressions. We explored recognition of facial actions from the facial action coding system (FACS), as well as recognition of fall facial expressions. Each video-frame is first scanned in real-time to detect approximately upright frontal faces. The faces found are scaled into image patches of equal size, convolved with a bank of Gabor energy filters, and then passed to a recognition engine that codes facial expressions into 7 dimensions in real time: neutral, anger, disgust, fear, joy, sadness, surprise. We report results on a series of experiments comparing recognition engines, including AdaBoost, support vector machines, linear discriminant analysis, as well as feature selection techniques. Best results were obtained by selecting a subset of Gabor filters using AdaBoost and then training support vector machines on the outputs of the filters selected by AdaBoost. The generalization performance to new subjects for recognition of full facial expressions in a 7-way forced choice was 93% correct, the best performance reported so far on the Cohn-Kanade FACS-coded expression dataset. We also applied the system to fully automated facial action coding. The present system classifies 18 action units, whether they occur singly or in combination with other actions, with a mean agreement rate of 94.5% with human FACS codes in the Cohn-Kanade dataset. The outputs of the classifiers change smoothly as a function of time and thus can be used to measure facial expression dynamics.
机译:我们提出了一种机器学习方法的系统比较,该方法适用于面部表情的全自动识别问题。我们探索了从面部动作编码系统(FACS)对面部动作的识别,以及对秋季面部表情的识别。首先对每个视频帧进行实时扫描,以检测大约直立的正面。找到的脸部被缩放为相等大小的图像块,并与一组Gabor能量过滤器卷积,然后传递到识别引擎,该引擎将面部表情实时编码为7个维度:中性,愤怒,厌恶,恐惧,喜悦,悲伤, 惊喜。我们报告了一系列比较识别引擎的实验结果,包括AdaBoost,支持向量机,线性判别分析以及特征选择技术。通过使用AdaBoost选择Gabor滤波器的子集,然后在AdaBoost选择的滤波器的输出上训练支持向量机,可以获得最佳结果。在7种强制选择中,针对新受试者的全面面部表情识别的泛化性能正确率为93%,这是迄今为止在Cohn-Kanade FACS编码的表情数据集上报告的最佳性能。我们还将系统应用于全自动面部动作编码。本系统对18个动作单元进行分类,无论它们是单独发生还是与其他动作组合出现,在Cohn-Kanade数据集中与人类FACS代码的平均一致率为94.5%。分类器的输出随时间平滑变化,因此可用于测量面部表情动态。

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