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A Novel Nonlinear Multi-feature Fusion Algorithm: Multiple Kernel Multiset Integrated Canonical Correlation Analysis

机译:一种新型非线性多特征融合算法:多核多重集成规范正相关分析

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Multiset integrated canonical correlation analysis (MICCA) can distinctly express the integral correlation among multi-group feature. Thus, MICCA is very powerful for multiple feature extraction. However, it is difficult to capture nonlinear relationships with the linear mapping. In order to overcome this problem, we, in this paper, propose a multi-kernel multiset integrated canonical correlation analysis (MK-MICCA) framework for subspace learning. In the MK-MICCA framework, the input data of each feature are mapped into multiple higher dimensional feature spaces by implicitly nonlinear mappings determined by different kernels. This enables MK-MICCA to uncover a variety of different geometrical structures of the original data in the feature spaces. Extensive experimental results on multiple feature database and ORL database show that MK-MICCA is very effective and obviously outperforms the single-kernel-based MICCA.
机译:多立方集成规范相关分析(MICCA)可以明确地表达多组特征之间的积分相关性。因此,MICCA对于多个特征提取非常强大。然而,难以与线性映射捕获非线性关系。为了克服这个问题,我们在本文中提出了一种用于子空间学习的多核多网集成规范相关分析(MK-MICCA)框架。在MK-MICCA框架中,每个特征的输入数据通过由不同内核确定的隐式非线性映射映射到多个高维特征空间中。这使MK-MICCA能够在特征空间中揭示原始数据的各种不同的几何结构。多个特征数据库和ORL数据库上的广泛实验结果表明,MK-MICCA非常有效,显然优于基于单内核的云卡。

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