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Analyzing Facial Expression by Fusing Manifolds

机译:通过融合歧管分析面部表情

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Feature representation and classification are two major issues in facial expression analysis. In the past, most methods used either holistic or local representation for analysis. In essence, local information mainly focuses on the subtle variations of expressions and holistic representation stresses on global diversities. To take the advantages of both, a hybrid representation is suggested in this paper and manifold learning is applied to characterize global and local information discriminatively. Unlike some methods using unsupervised manifold learning approaches, embedded manifolds of the hybrid representation are learned by adopting a supervised manifold learning technique. To integrate these manifolds effectively, a fusion classifier is introduced, which can help to employ suitable combination weights of facial components to identify an expression. Comprehensive comparisons on facial expression recognition are included to demonstrate the effectiveness of our algorithm.
机译:特征表示和分类是面部表情分析中的两个主要问题。在过去,大多数方法使用整体或本地表示进行分析。从本质上讲,当地信息主要侧重于表达和整体表现应力对全球多样性的微妙变化。为了采取两者的优点,在本文中提出了一种混合表示,并且歧管学习被应用于判别表征全局和局部信息。与使用无监督的歧管学习方法的一些方法不同,通过采用监督的歧管学习技术来学习混合表示的嵌入式歧管。为了有效地整合这些歧管,引入了融合分类器,这可以有助于采用面部部件的合适的组合重量来识别表达式。包括对面部表情识别的综合比较,以证明我们算法的有效性。

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