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Co-Clustering to Reveal Salient Facial Features for Expression Recognition

机译:共聚类以揭示表达识别的显着面部特征

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摘要

Facial expressions are a strong visual intimation of gestural behaviors. The intelligent ability to learn these non-verbal cues of the humans is the key characteristic to develop efficient human computer interaction systems. Extracting an effective representation from facial expression images is a crucial step that impacts the recognition accuracy. In this paper, we propose a novel feature selection strategy using singular value decomposition (SVD) based co-clustering to search for the most salient regions in terms of facial features that possess a high discriminating ability among all expressions. To the best of our knowledge, this is the first known attempt to explicitly perform co-clustering in the facial expression recognition domain. In our method, Gabor filters are used to extract local features from an image and then discriminant features are selected based on the class membership in co-clusters. Experiments demonstrate that co-clustering localizes the salient regions of the face image. Not only does the procedure reduce the dimensionality but also improves the recognition accuracy. Experiments on CK plus, JAFFE and MMI databases validate the existence and effectiveness of these learned facial features.
机译:面部表情是一种强烈的姿态行为视觉暗示。学习这些非口头线索的智能能力是开发高效人类计算机交互系统的关键特征。从面部表情图像中提取有效表示是影响识别准确性的重要步骤。在本文中,我们提出了一种新颖的特征选择策略,使用基于奇异值分解(SVD)的共聚类来在所有表情中具有高分辨率能力的面部特征来搜索最突出的区域。据我们所知,这是第一个已知的尝试在面部表情识别域中明确执行共聚类。在我们的方法中,Gabor过滤器用于从图像中提取来自图像的本地特征,然后根据共簇中的类成员资格选择判别特征。实验表明,共聚类定位了面部图像的凸起区域。该程序不仅可以降低维度,还可以提高识别准确性。 CK Plus,Jaffe和MMI数据库的实验验证了这些学习面部特征的存在和有效性。

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