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Sparse localized facial motion dictionary learning for facial expression recognition

机译:用于面部表情识别的稀疏局部面部运动字典学习

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This paper presents a new framework for facial motion modeling with applications to facial expression recognition. First, we design sparse localized facial motion dictionaries from dense motion flow data of facial expression image sequences. Regularization based on spatial localized support map in addition to the sparsity constraints enables spatially localized dictionary learning. Proposed localized dictionaries are effective for local facial motion description as well as global facial motion analysis. Experimental results using CK+ database shows promising results for automatic facial expression recognition from motion flow data.
机译:本文提出了一种新的用于面部运动建模的框架,并将其应用于面部表情识别。首先,我们根据面部表情图像序列的密集运动流数据设计稀疏的局部面部运动字典。除了稀疏性约束之外,基于空间局部支持图的正则化还可以实现空间局部字典学习。建议的局部字典对于局部面部动作描述以及整体面部动作分析有效。使用CK +数据库的实验结果显示了从运动流数据中自动表情识别的有希望的结果。

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