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Semisupervised Kernel Marginal Fisher Analysis for Face Recognition

机译:半质地核心边缘Fisher分析面部识别

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摘要

Dimensionality reduction is a key problem in face recognition due to the high-dimensionality of face image. To effectively cope with this problem, a novel dimensionality reduction algorithm called semisupervised kernel marginal Fisher analysis (SKMFA) for face recognition is proposed in this paper. SKMFA can make use of both labelled and unlabeled samples to learn the projection matrix for nonlinear dimensionality reduction. Meanwhile, it can successfully avoid the singularity problem by not calculating the matrix inverse. In addition, in order to make the nonlinear structure captured by the data-dependent kernel consistent with the intrinsic manifold structure, a manifold adaptive nonparameter kernel is incorporated into the learning process of SKMFA. Experimental results on three face image databases demonstrate the effectiveness of our proposed algorithm.
机译:减少维度是由于脸部图像的高度的面部识别的关键问题。为了有效地应对这个问题,本文提出了一种称为半化内核边缘Fisher分析(SKMFA)的新型维度减少算法。 SKMFA可以使用标记和未标记的样本来学习非线性维度降低的投影矩阵。同时,它可以通过不计算矩阵逆来成功避免奇点问题。另外,为了使由与内在歧管结构一致的数据相关的内核捕获的非线性结构,歧管自适应非参数内核结合到SKMFA的学习过程中。三面图像数据库的实验结果证明了我们所提出的算法的有效性。

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