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Coupling Adaboost and Random Subspace for Diversified Fisher Linear Discriminant

机译:多元Fisher线性判别式的Adaboost和随机子空间耦合

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Fisher linear discriminant (FLD) is a popular method for feature extraction in face recognition. However, It often suffers from the small sample size, bias and overfitting problems when dealing with the high dimensional face image data. In this paper, a framework of ensemble learning for diversified Fisher linear discriminant (EnL - DFLD) is proposed to improve the current FLD based face recognition algorithms. Firstly, the classifier ensemble in EnL - DFLD is composed of a set of diversified component FLD classifiers, which are selected intentionally by computing the diversity between the candidate component classifiers. Secondly, the candidate component classifiers are constructed by coupling the random subspace and adaboost methods, and it can also be shown that such a coupling scheme will result in more suitable component classifiers so as to increase the generalization performance of EnL - DFLD. Experiments on two common face databases verify the superiority of the proposed EnL - DFLD over the state-of-the-art algorithms in recognition accuracy
机译:Fisher线性判别(FLD)是在人脸识别中用于特征提取的一种流行方法。但是,在处理高维人脸图像数据时,通常会遇到样本量小,偏差和拟合过度的问题。本文提出了一种用于多元Fisher线性判别式(E n L-DFLD)的集成学习框架,以改进当前基于FLD的人脸识别算法。首先,E n L DFLD中的分类器集合由一组多样化的成分FLD分类器组成,这些分类器是通过计算候选成分分类器之间的多样性而有选择地选择的。其次,通过将随机子空间和adaboost方法耦合来构造候选分量分类器,并且还可以证明,这种耦合方案将导致更合适的分量分类器,从而提高E n 的泛化性能。 sub> L-DFLD。在两个常见的人脸数据库上进行的实验验证了所提出的E n L-DFLD在识别精度方面优于最新算法

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