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A Regularized Nonlinear Discrimination Approach

机译:正常的非线性歧视方法

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For nonlinear discrimination analysis technique, there are some key points worthy of further research. One is finding an effective rule to select appropriate kernel function parameter for different sample sets. Another is providing a simple and efficient solution for the singularity problem of within-class scatter matrix. In this paper, we focus on these two points and address a regularized nonlinear discrimination analysis approach. We first present a definition of regularized within-class scatter and provide a very simple solution of regularization parameter. Then, a nonlinear discriminant judgment is proposed to select the parameter of radial basis function. A large public face database is used as the test data. The experimental results demonstrate that the proposed approach outperforms several representative nonlinear discrimination methods.
机译:对于非线性歧视分析技术,有一些关键要点值得进一步研究。一个是为不同的样本集选择适当的内核功能参数找到有效规则。另一个是为级别散射矩阵内的奇异性问题提供简单而有效的解决方案。在本文中,我们专注于这两点并解决了正则化的非线性歧视分析方法。我们首先在课堂内散射中展示了定期的定义,并提供了一个非常简单的正则化参数解决方案。然后,提出了非线性判别判断以选择径向基函数的参数。大型公共面部数据库用作测试数据。实验结果表明,所提出的方法优于几种代表性非线性歧视方法。

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