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Learning multiview face subspaces and facial pose estimation using independent component analysis

机译:使用独立分量分析学习多视图面部子空间和面部姿势估计

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摘要

An independent component analysis (ICA) based approach is presented for learning view-specific subspace representations of the face object from multiview face examples. ICA, its variants, namely independent subspace analysis (ISA) and topographic independent component analysis (TICA), take into account higher order statistics needed for object view characterization. In contrast, principal component analysis (PCA), which de-correlates the second order moments, can hardly reveal good features for characterizing different views, when the training data comprises a mixture of multiview examples and the learning is done in an unsupervised way with view-unlabeled data. We demonstrate that ICA, TICA, and ISA are able to learn view-specific basis components unsupervisedly from the mixture data. We investigate results learned by ISA in an unsupervised way closely and reveal some surprising findings and thereby explain underlying reasons for the emergent formation of view subspaces. Extensive experimental results are presented.
机译:提出了一种基于独立成分分析(ICA)的方法,用于从多视图面部示例中学习面部对象的特定于视图的子空间表示。 ICA及其变体,即独立子空间分析(ISA)和地形独立分量分析(TICA),考虑了对象视图表征所需的高阶统计量。相反,当训练数据包含多视图示例的混合并且学习是在无监督的情况下完成的,则与二阶矩不相关的主成分分析(PCA)几乎无法揭示表征不同视图的良好特征。 -未标记的数据。我们证明ICA,TICA和ISA能够从混合数据中无监督地学习特定于视图的基础成分。我们将以无人监督的方式密切调查ISA获知的结果,并揭示一些令人惊讶的发现,从而解释视图子空间出现的根本原因。提出了广泛的实验结果。

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