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Improved kernel fisher nonlinear discriminant analysis used in face identification

机译:改进的核Fisher非线性判别分析用于人脸识别

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Local linear embedding proposed that face data would found in some low dimensional subspace, All face data would be linearity denoted optimal with data in neighborhood of the data. The input space without linear separability be mapped into linear divisible high dimensional space by nonlinear map-ping. Structure kernel spread inner matrix based on local linear embedding and kernel fisher nonlinear discriminant analysis, The matrix is nearly full rank. Make the optimal eigenvector in nonnull subspace of this matrix to test, and make a compare to kernel fisher null space algorithm. The experiment show the new algorithm is effective.
机译:局部线性嵌入提出了在一些低维子空间中可以找到人脸数据。所有人脸数据都是线性的,表示该值与数据邻域中的数据最优。通过非线性映射将没有线性可分离性的输入空间映射到线性可分高维空间。基于局部线性嵌入和核Fisher非线性判别分析的结构核展开内部矩阵,该矩阵几乎是满秩的。在该矩阵的非零子空间中进行最优特征向量测试,并与内核费舍尔零空间算法进行比较。实验表明,该算法是有效的。

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