Modular dynamic RBF neural network for face recognition

S. I. Ch'ng, K. Seng, L. Ang
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引用次数: 9

Abstract

Over the years, we have seen an increase in the use of RBF neural networks for the task of face recognition. However, the use of second order algorithms as the learning algorithm for all the adjustable parameters in such networks are rare due to the high computational complexity of the calculation of the Jacobian and Hessian matrix. Hence, in this paper, we propose a modular structural training architecture to adapt the Levenberg-Marquardt based RBF neural network for the application of face recognition. In addition to the proposal of the modular structural training architecture, we have also investigated the use of different front-end processors to reduce the dimension size of the feature vectors prior to its application to the LM-based RBF neural network. The investigative study was done on three standard face databases; ORL, Yale and AR databases.
面向人脸识别的模块化动态RBF神经网络
多年来,我们看到RBF神经网络在人脸识别任务中的使用有所增加。然而,由于雅可比矩阵和Hessian矩阵的计算复杂度较高,在此类网络中很少使用二阶算法作为所有可调参数的学习算法。因此,在本文中,我们提出了一种模块化结构的训练架构,以适应基于Levenberg-Marquardt的RBF神经网络在人脸识别中的应用。除了提出模块化结构训练架构外,我们还研究了在将特征向量应用于基于lm的RBF神经网络之前,使用不同的前端处理器来降低特征向量的维度大小。调查研究是在三个标准的人脸数据库上进行的;ORL,耶鲁和AR数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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