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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Localized Multifeature Metric Learning for Image-Set-Based Face Recognition
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Localized Multifeature Metric Learning for Image-Set-Based Face Recognition

机译:基于图像集的人脸识别的局部多功能度量学习

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This paper presents a new approach to image-set-based face recognition, where each training and testing example is a set of face images captured from varying poses, illuminations, expressions, and resolutions. While a number of image set based face recognition methods have been proposed in recent years, most of them model each face image set as a single linear subspace or as the union of linear subspaces, which may lose some discriminative information for face image set representation. To address this shortcoming, we propose exploiting statistics information as feature representations for face image sets and develop a localized multikernel metric learning algorithm to effectively combine different statistics for recognition. Moreover, we propose a localized multikernel multimetric learning method to jointly learn multiple feature-specific distance metrics in the kernel spaces, one for each statistic feature, to better exploit complementary information for recognition. Our methods achieve state-of-the-art performance on four widely used video face datasets including the Honda, MoBo, YouTube Celebrities, and YouTube Face datasets.
机译:本文提出了一种基于图像集的面部识别的新方法,其中每个训练和测试示例都是从不同姿势,照明,表情和分辨率捕获的一组面部图像。尽管近年来已经提出了许多基于图像集的面部识别方法,但是大多数方法将每个面部图像集建模为单个线性子空间或线性子空间的并集,这可能会丢失一些用于面部图像集表示的判别信息。为了解决此缺点,我们建议利用统计信息作为面部图像集的特征表示,并开发一种本地化的多核度量学习算法,以有效地组合不同的统计信息进行识别。此外,我们提出了一种局部化的多核多度量学习方法,以在内核空间中联合学习多个特定于特征的距离度量,每个度量用于一个统计特征,以更好地利用互补信息进行识别。我们的方法在包括Honda,MoBo,YouTube Celebrities和YouTube Face数据集在内的四个广泛使用的视频面部数据集上实现了最先进的性能。

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