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Eyes Do Not Lie: Spontaneous versus Posed Smiles

机译:眼睛不撒谎:自发与姿势微笑

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Automatic detection of spontaneous versus posed facial expressions received a lot of attention in recent years. However, almost all published work in this area use complex facial features or multiple modalities, such as head pose and body movements with facial features. Besides, the results of these studies are not given on public databases. In this paper, we focus on eyelid movements to classify spontaneous versus posed smiles and propose distance-based and angular features for eyelid movements. We assess the reliability of these features with continuous HMM, k-NN and naive Bayes classifiers on two different public datasets. Experimentation shows that our system provides classification rates up to 91 per cent for posed smiles and up to 80 per cent for spontaneous smiles by using only eyelid movements. We additionally compare the discrimination power of movement features from different facial regions for the same task.
机译:近年来,自动检测自发检测与构成的面部表情有很多关注。然而,几乎所有公布的所有在该领域的工作都使用复杂的面部特征或多种模式,例如头部姿势和身体运动,具有面部特征。此外,这些研究的结果未在公共数据库上给出。在本文中,我们专注于眼睑运动来分类自发与构成微笑,并提出基于距离的眼睑运动的角度特征。我们在两个不同的公共数据集上使用连续的HMM,K-NN和NAIVE Bayes分类器评估这些功能的可靠性。实验表明,通过仅使用眼睑运动,我们的系统提供了高达91%的分类率,高达91%,并且可以通过仅使用眼睑运动来为自发微笑。我们另外比较不同面部区域的运动特征的辨别力量。

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