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Ll-Norm Based Linear Discriminant Analysis: An Application to Face Recognition

机译:基于Ll-范数的线性判别分析:在人脸识别中的应用

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Linear Discriminant Analysis (LDA) is a well-known feature extraction method for supervised subspace learning in statistical pattern recognition. In this paper, a novel method of LDA based on a new LI-norm optimization technique and its variances are proposed. The conventional LDA, which is based on L2-norm, is sensitivity to the presence of outliers, since it used the L2-norm to measure the between-class and within-class distances. In addition, the conventional LDA often suffers from the so-called small sample size (3S) problem since the number of samples is always smaller than the dimension of the feature space in many applications, such as face recognition. Based on Ll-norm, the proposed methods have several advantages, first they are robust to outliers because they utilize the Ll-norm, which is less sensitive to outliers. Second, they have no 3S problem. Third, they are invariant to rotations as well. The proposed methods are capable of reducing the influence of outliers substantially, resulting in a robust classification. Performance assessment in face application shows that the proposed approaches are more effectiveness to address outliers issue than traditional ones.
机译:线性判别分析(LDA)是一种用于统计模式识别中监督子空间学习的众所周知的特征提取方法。本文提出了一种基于新的LI范数优化技术的LDA新方法及其方差。基于L2范数的常规LDA对异常值的存在非常敏感,因为它使用L2范数来衡量类间距离和类内距离。另外,常规的LDA经常遭受所谓的小样本大小(3S)问题,因为在许多应用中,例如面部识别,样本的数量总是小于特征空间的尺寸。基于L1范数,所提出的方法具有多个优点,首先,它们对异常值具有鲁棒性,因为它们利用了对异常值不敏感的L1范数。其次,他们没有3S问题。第三,它们对于旋转也是不变的。所提出的方法能够显着减少离群值的影响,从而实现稳健的分类。人脸应用中的性能评估表明,所提出的方法比传统方法更有效地解决离群值问题。

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