Face Recognition Using A Radial Basis Function Classifier

M. Faúndez-Zanuy, E. Monte‐Moreno
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引用次数: 3

Abstract

Face recognition is probably the most natural way to perform a biometric authentication between human beings. However, the available technology for automatic systems still presents some drawbacks and is far away from human performance. In this paper we use the same DCT feature extraction approach presented in previous ICCST03 and ICCST'05. However, we improve the experimental results using a radial basis function (RBF) neural network in combination with the coding of the recognized class. We explain why the RBF, do not have the limitations of other classifiers such as the MLP. We also propose a method for dealing with the high number of classes associated to the task of face recognition which takes into account the limitations of the RBF as classifiers, and discuss the weakness of these methods when the number of training samples is limited. We have performed an exhaustive study about the neural network architecture and parameters, which has let us to establish relevant conclusions about the optimal configuration
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基于径向基函数分类器的人脸识别
人脸识别可能是人类之间进行生物识别认证最自然的方式。然而,现有的自动化系统技术仍然存在一些缺陷,距离人类的表现还很远。在本文中,我们使用与以前的ICCST03和ICCST'05中提出的相同的DCT特征提取方法。然而,我们使用径向基函数(RBF)神经网络结合识别类的编码来改进实验结果。我们解释了为什么RBF没有其他分类器(如MLP)的限制。我们还提出了一种处理与人脸识别任务相关的大量类的方法,该方法考虑了RBF作为分类器的局限性,并讨论了这些方法在训练样本数量有限时的弱点。我们对神经网络的结构和参数进行了详尽的研究,使我们能够建立有关最优配置的相关结论
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