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Canonical sparse cross-view correlation analysis

机译:典型的稀疏交叉视图相关性分析

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Recently, multi-view feature extraction has attracted great interest and Canonical Correlation Analysis (CCA) is a powerful technique for finding the linear correlation between two view variable sets. However, CCA does not consider the structure and cross view information in feature extraction, which is very important for subsequence tasks. In this paper, a new approach called Canonical Sparse Cross-view Correlation Analysis (CSCCA) is proposed to address this problem. We first construct similarity matrices by performing sparse representation between within-class samples. Then local manifold information and cross-view correlations are incorporated into CCA. Furthermore, a kernel version of CSCCA (KCSCCA) is proposed to reveal the nonlinear correlation relationship between two sets of features. We compare CSCCA and KCSCCA with existing multi-view feature extraction methods and perform experiments on both artificial data set and real world databases including multiple features and face data sets. The experimental results demonstrate the merits of our proposed method. (C) 2016 Elsevier B.V. All rights reserved.
机译:最近,多视图特征提取引起了人们的极大兴趣,规范相关分析(Canonical Correlation Analysis,CCA)是一种强大的技术,可用于发现两个视图变量集之间的线性相关性。但是,CCA在特征提取中不考虑结构和交叉视图信息,这对于子序列任务非常重要。在本文中,提出了一种新的方法,称为规范稀疏跨视图相关分析(CSCCA),以解决此问题。我们首先通过在类内样本之间执行稀疏表示来构造相似性矩阵。然后将局部流形信息和交叉视图相关性合并到CCA中。此外,提出了一个内核版本的CSCCA(KCSCCA),以揭示两组特征之间的非线性相关关系。我们将CSCCA和KCSCCA与现有的多视图特征提取方法进行比较,并在人工数据集和包含多个特征和面部数据集的真实世界数据库上进行实验。实验结果证明了我们提出的方法的优点。 (C)2016 Elsevier B.V.保留所有权利。

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