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Gaussian mixture model based estimation of the neutral face shape for emotion recognition

机译:基于高斯混合模型的中性脸部表情估计

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When the goal is to recognize the facial expression of a person given an expressive image, there are mainly two types of information encoded in the image that we have to deal with: identity-related information and expression related information. Alleviating the identity-related information, for example by using an image of the same person with a neutral facial expression, increases the success of facial expression recognition algorithms. However, the neutral face image corresponding to an expressive face may not always be available or known, which is known as the baseline problem. In this work, we propose a general solution to the baseline problem by estimating the unknown neutral face shape of an expressive face image using a dictionary of neutral face shapes. The dictionary is formed using a Gaussian Mixture Model fitting method. We also present a method of fusing shape-based (geometrical) features with appearance based features by calculating them only around the most discriminative geometrical facial features, which have been selected automatically. Experimental results on three widely used facial expression databases as well as cross database analysis show thatutilization of the estimated neutral face shapes increases the facial expression recognition rate significantly, when the person-specific neutral face information is not available.
机译:当目标是识别给定表达图像的人的面部表情时,在图像中编码的信息主要有两种类型:与身份相关的信息和与表达相关的信息。例如通过使用具有中性面部表情的同一个人的图像来减轻与身份有关的信息,增加了面部表情识别算法的成功。但是,与表情丰富的脸部相对应的中性脸部图像可能并不总是可用或已知的,这被称为基线问题。在这项工作中,我们通过使用中性脸部形状的字典来估计表达性脸部图像的未知中性脸部形状,提出了解决基线问题的一般方法。该字典是使用高斯混合模型拟合方法形成的。我们还提出了一种方法,通过仅基于最具区分性的几何面部特征(已自动选择)进行计算,将基于形状的(几何)特征与基于外观的特征融合在一起。在三个广泛使用的面部表情数据库以及跨数据库分析上的实验结果表明,当无法获得特定于人的中性面部信息时,利用估计的中性面部形状可以显着提高面部表情识别率。

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