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Learning Interpretable Expression-sensitive Features for 3D Dynamic Facial Expression Recognition

机译:学习3D动态面部表情识别的解释表达式敏感特征

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Different facial components carry different amount of information being conveyed for 3D dynamic expression recognition. Hence, identifying facial components that are highly relevant to specific expression changes is crucial for discriminative facial expression recognition. This work aims to learn expression-sensitive features, which are expected to not only yield comparable recognition performance with the state-of-the-art ones, but also can be interpreted by human. Firstly, spatio-temporal features (HOG3D) are extracted from local depth patch-sequences to represent facial expression dynamics. A two-phase feature selection process is then proposed to determine the facial components that can best distinguish the expressions. In order to verify the effectiveness of the resulting facial components, the expression-sensitive features from the corresponding area are fed into a hierarchical classifier for facial expression recognition. The proposed method is evaluated on the BU-4DFE benchmark database, and results show that learned expression-sensitive features can achieve a comparable recognition performance with existing methods. Additionally, the resulting HOG3D features after feature selection can be used to generate semantic interpretation of the expression dynamics.
机译:不同的面部部件携带不同量的信息,用于3D动态表达式识别。因此,识别与特定表达变化高度相关的面部组分对于鉴别的面部表情识别至关重要。这项工作旨在学习表达敏感的特征,这预计不仅会使最先进的识别性能产生可比的识别性能,而且可以通过人类解释。首先,从局部深度补丁序列中提取时空特征(HOG3D)以表示面部表情动态。然后提出了一种两相特征选择过程以确定可以最能区分表达的面部组件。为了验证所产生的面部组件的有效性,来自相应区域的表达式敏感特征被馈送到用于面部表情识别的分层分类器。在Bu-4dfe基准数据库上评估所提出的方法,结果表明,学习的表达式敏感功能可以通过现有方法实现可比的识别性能。另外,在特征选择之后产生的Hog3D特征可用于生成表达动态的语义解释。

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