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In-the-wild Facial Expression Recognition in Extreme Poses

机译:极端姿势中的狂野面部表情识别

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In the computer research area, facial expression recognition is a hot research problem. Recent years, the research has moved from the lab environment to in-the-wild circumstances. It is challenging, especially under extreme poses. But current expression detection systems are trying to avoid the pose effects and gain the general applicable ability. In this work, we solve the problem in the opposite approach. We consider the head poses and detect the expressions within special head poses. Our work includes two parts: detect the head pose and group it into one pre-defined head pose class; do facial expression recognize within each pose class. Our experiments show that the recognition results with pose class grouping are much better than that of direct recognition without considering poses. We combine the hand-crafted features, SIFT, LBP and geometric feature, with deep learning feature as the representation of the expressions. The handcrafted features are added into the deep learning framework along with the high level deep learning features. As a comparison, we implement SVM and random forest to as the prediction models. To train and test our methodology, we labeled the face dataset with 6 basic expressions.
机译:在计算机研究领域,面部表情识别是一个热门的研究问题。近年来,研究已从实验室环境转移到了野外环境。这非常具有挑战性,特别是在极端姿势下。但是当前的表情检测系统试图避免姿势影响并获得普遍的应用能力。在这项工作中,我们以相反的方式解决了问题。我们考虑头部姿势,并检测特殊头部姿势中的表情。我们的工作包括两个部分:检测头部姿势并将其分组为一个预定义的头部姿势类;在每个姿势类别中识别面部表情。我们的实验表明,使用姿势类别分组的识别结果比不考虑姿势的直接识别要好得多。我们将手工制作的特征,SIFT,LBP和几何特征与深度学习特征相结合,以表达形式。手工制作的功能与高级深度学习功能一起添加到了深度学习框架中。作为比较,我们将SVM和随机森林作为预测模型。为了训练和测试我们的方法,我们用6个基本表达式标记了面部数据集。

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