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Facial Image Analysis Using Subspace Segregation Based on Class Information

机译:基于类信息的子空间分离的人脸图像分析

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Analysis and classification of facial images have been a challenging topic in the field of pattern recognition and computer vision. In order to get efficient features from raw facial images, a large number of feature extraction methods have been developed. Still, the necessity of more sophisticated feature extraction method has been increasing as the classification purposes of facial images are diversified. In this paper, we propose a method for segregating facial image space into two subspaces according to a given purpose of classification. From raw input data, we first find a subspace representing noise features which should be removed for widening class discrepancy. By segregating the noise subspace, we can obtain a residual subspace which includes essential information for the given classification task. We then apply some conventional feature extraction method such as PCA and ICA to the residual subspace so as to obtain some efficient features. Through computational experiments on various facial image classification tasks - individual identification, pose detection, and expression recognition - , we confirm that the proposed method can find an optimized subspace and features for each specific classification task.
机译:在模式识别和计算机视觉领域,面部图像的分析和分类一直是一个具有挑战性的主题。为了从原始的面部图像获得有效的特征,已经开发了大量的特征提取方法。但是,随着面部图像的分类目的多样化,越来越需要更复杂的特征提取方法。在本文中,我们提出了一种根据给定分类目的将面部图像空间分为两个子空间的方法。从原始输入数据中,我们首先找到一个代表噪声特征的子空间,应将其删除以扩大类别差异。通过隔离噪声子空间,我们可以获得包含给定分类任务必不可少的信息的剩余子空间。然后,我们将一些常规的特征提取方法(例如PCA和ICA)应用于残差子空间,以获得一些有效的特征。通过对各种面部图像分类任务(个人识别,姿势检测和表情识别)的计算实验,我们确认了该方法可以为每个特定分类任务找到优化的子空间和特征。

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