Kotsia Irene, Zafeiriou Stefanos, Pitas Ioannis
Department of Informatics, Aristotle University of Thessaloniki, 54124 Thessaloniki, Greece.
IEEE Trans Neural Netw. 2009 Jan;20(1):14-34. doi: 10.1109/TNN.2008.2004376. Epub 2008 Dec 9.
In this paper, a novel class of multiclass classifiers inspired by the optimization of Fisher discriminant ratio and the support vector machine (SVM) formulation is introduced. The optimization problem of the so-called minimum within-class variance multiclass classifiers (MWCVMC) is formulated and solved in arbitrary Hilbert spaces, defined by Mercer's kernels, in order to find multiclass decision hyperplanes/surfaces. Afterwards, MWCVMCs are solved using indefinite kernels and dissimilarity measures via pseudo-Euclidean embedding. The power of the proposed approach is first demonstrated in the facial expression recognition of the seven basic facial expressions (i.e., anger, disgust, fear, happiness, sadness, and surprise plus the neutral state) problem in the presence of partial facial occlusion by using a pseudo-Euclidean embedding of Hausdorff distances and the MWCVMC. The experiments indicated a recognition accuracy rate achieved up to 99%. The MWCVMC classifiers are also applied to face recognition and other classification problems using Mercer's kernels.
本文介绍了一类受Fisher判别比优化和支持向量机(SVM)公式启发的新型多类分类器。为了找到多类决策超平面/曲面,提出了所谓的最小类内方差多类分类器(MWCVMC)的优化问题,并在由Mercer核定义的任意希尔伯特空间中求解。之后,通过伪欧几里得嵌入,使用不定核和差异度量来求解MWCVMC。首先,通过使用豪斯多夫距离的伪欧几里得嵌入和MWCVMC,在存在部分面部遮挡的情况下,在七种基本面部表情(即愤怒、厌恶、恐惧、快乐、悲伤、惊讶以及中性状态)的面部表情识别问题中展示了所提方法的有效性。实验表明识别准确率高达99%。MWCVMC分类器还被应用于使用Mercer核的人脸识别和其他分类问题。