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Gabor tensor based face recognition using the boosted nonparametric maximum margin criterion

机译:使用增强型非参数最大余量准则的基于Gabor张量的人脸识别

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摘要

This paper proposes a new face recognition method that combines the ensemble learning with the third-order Gabor tensor. In this method, the third-order Gabor tensor is used to replace the vectorial Gabor feature representation in order to keep high-dimensional adjacent structures in images. In order to avoid to fall into the curse of the dimensions due to the tensor, a multilinear principle component analysis (MPCA) algorithm is utilized to reduce the dimensions of the Gabor tensor. The obtained low-dimensional Gabor tensor features are selected in term of their discriminant ability to form a vectorial Gabor feature representation. It is embedded into a new sample selection scheme to construct a new classifier. Different from the traditional sample selection, the samples with high misclassification rate regardless of their class is used to train a set of diversity Nonparametric Maximum Margin Criterion (NMMC) learners and the scheme allows each class to have different numbers of samples. In construction of the classifier, multiple weak classifiers are first trained in terms of the K-NN criterion and then these weak classifiers are fused into a boosted classifier in terms of the confidence levels of individual weak classifiers. The proposed method inherits the merit of both the boosting technique and the Gabor wavelets. Experimental results on several benchmark face databases show that it attains better performance than the existing state-of-the-art methods.
机译:本文提出了一种将整体学习与三阶Gabor张量相结合的人脸识别新方法。在这种方法中,为了保持图像中的高维相邻结构,使用三阶Gabor张量替换矢量Gabor特征表示。为了避免因张量而陷入尺寸的诅咒,采用多线性主成分分析(MPCA)算法来减小Gabor张量的尺寸。根据获得的低维Gabor张量特征的判别能力来选择它们,以形成矢量Gabor特征表示。它被嵌入到新的样本选择方案中以构造新的分类器。与传统样本选择不同,具有高误分类率的样本(无论其类别如何)都用于训练一组多样性非参数最大保证金标准(NMMC)学习者,并且该方案允许每个类别具有不同数量的样本。在分类器的构造中,首先根据K-NN准则训练多个弱分类器,然后根据各个弱分类器的置信度将这些弱分类器融合到增强分类器中。所提出的方法继承了增强技术和Gabor小波的优点。在几个基准人脸数据库上的实验结果表明,与现有的最新方法相比,它具有更好的性能。

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