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首页> 外文期刊>International Journal of Computational Science and Engineering >Kernel-based tensor discriminant analysis with fuzzy fusion for face recognition
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Kernel-based tensor discriminant analysis with fuzzy fusion for face recognition

机译:基于内核的张力判别分析与人脸识别模糊融合

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This paper proposes a novel kernel-based image subspace learning method for face recognition, by encoding a face image as a tensor of second order (matrix). First, we propose a kernel-based discriminant tensor criterion, called kernel bilinear fisher criterion (KBFC), which is designed to simultaneously pursue two projection vectors to maximise the interclass scatter and at the same time minimise the intraclass scatter in its corresponding subspace. Then, a score level fusion method is presented to combine two separate projection results to achieve classification tasks. Experimental results on the ORL and UMIST face databases show the effectiveness of the proposed approach.
机译:本文提出了一种基于新颖的基于内核的图像子空间学习方法,用于对面部识别的面部图像作为二阶图像(矩阵)的张量来编码。 首先,我们提出基于内核的判别张量标准,称为内核双线性Fisher标准(KBFC),其被设计为同时追求两个投影矢量,以最大化杂散散射,同时最小化其相应的子空间中的腹部散射。 然后,提出了一种分数水平融合方法以将两个单独的投影结果组合以实现分类任务。 ORL和Umist面部数据库上的实验结果表明了所提出的方法的有效性。

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