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Probabilistic Temporal Head Pose Estimation Using a Hierarchical Graphical Model

机译:使用分层图形模型的概率时间头姿势估计

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We present a hierarchical graphical model to probabilistically estimate head pose angles from real-world videos, that leverages the temporal pose information over video frames. The proposed model employs a number of complementary facial features, and performs feature level, probabilistic classifier level and temporal level fusion. Extensive experiments are performed to analyze the pose estimation performance for different combination of features, different levels of the proposed hierarchical model and for different face databases. Experiments show that the proposed head pose model improves on the current state-of-the-art for the unconstrained McGillFaces and the constrained CMU Multi-PIE databases, increasing the pose classification accuracy compared to the current top performing method by 19.38% and 19.89%, respectively.
机译:我们向现实世界视频提供了一个分层图形模型,从现实世界视频估算头姿势角度,从而利用视频帧来利用时间姿势信息。 所提出的模型采用许多互补面部特征,并执行特征级别,概率分类器级别和时间级融合。 进行广泛的实验以分析特征不同组合的姿势估计性能,所提出的分层模型的不同水平和不同的面部数据库。 实验表明,所提出的头部姿势模型提高了无约束McGillfaces的当前最先进的MCGILLFACE和受约束的CMU多饼数据库,与目前的顶部表演方法相比增加了姿势分类精度,增加了19.38%和19.89% , 分别。

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