Kernel optimization-based discriminant analysis for face recognition

被引:0
|
作者
Jun-Bao Li
Jeng-Shyang Pan
Zhe-Ming Lu
机构
[1] Harbin Institute of Technology,Department of Automatic Test and Control
[2] University of Applied Sciences,Department of Electronic Engineering National Kaohsiung
[3] Harbin Institute of Technology Shenzhen Graduate School,Visual Information Analysis and Processing Research Center
来源
关键词
Face recognition; Kernel optimization-based discriminant analysis (KODA); Kernel discriminant analysis (KDA);
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学科分类号
摘要
The selection of kernel function and its parameter influences the performance of kernel learning machine. The difference geometry structure of the empirical feature space is achieved under the different kernel and its parameters. The traditional changing only the kernel parameters method will not change the data distribution in the empirical feature space, which is not feasible to improve the performance of kernel learning. This paper applies kernel optimization to enhance the performance of kernel discriminant analysis and proposes a so-called Kernel Optimization-based Discriminant Analysis (KODA) for face recognition. The procedure of KODA consisted of two steps: optimizing kernel and projecting. KODA automatically adjusts the parameters of kernel according to the input samples and performance on feature extraction is improved for face recognition. Simulations on Yale and ORL face databases are demonstrated the feasibility of enhancing KDA with kernel optimization.
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页码:603 / 612
页数:9
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