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Nystrom Approximations for Scalable Face Recognition: A Comparative Study

机译:腹段近似可扩展面部识别:比较研究

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Kernel principal component analysis (KPCA) is a widely-used statistical method for representation learning, where PCA is performed in reproducing kernel Hilbert space (RKHS) to extract nonlinear features from a set of training examples. Despite the success in various applications including face recognition, KPCA does not scale up well with the sample size, since, as in other kernel methods, it involves the eigen-decomposition of n × n Gram matrix which is solved in O(n~3) time. Nystrom method is an approximation technique, where only a subset of size m n is exploited to approximate the eigenvectors of n × n Gram matrix. In this paper we consider Nystrom method and its few modifications such as 'Nystrom KPCA ensemble' and 'Nystrom + randomized SVD' to improve the scalability of KPCA. We compare the performance of these methods in the task of learning face descriptors for face recognition.
机译:内核主成分分析(KPCA)是一种广泛使用的表示学习统计方法,其中PCA在再现内核希尔伯特空间(RKHS)中以从一组训练示例中提取非线性特征。尽管在包括面部识别的各种应用中取得成功,但KPCA对样本大小没有缩小,因为在其他内核方法中,它涉及在O(n〜3中的N×N克矩阵的特征分解。 ) 时间。 NyStrom方法是一种近似技术,其中仅利用大小M n的子集来近似n×n克矩阵的特征向量。在本文中,我们考虑Nystrom方法及其少数修改,例如“Nystrom KPCA合奏”和“Nystrom +随机SVD”,以提高KPCA的可扩展性。我们比较这些方法在学习面部描述符的任务中的性能进行面部识别。

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