Evolutionary design of Multiquadric radial basis functions neural network for face recognition

Vandana Agarwal, S. Bhanot
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引用次数: 3

Abstract

In this paper, it is proposed to use Multiquadric basis functions at hidden layer of radial basis functions neural networks (RBFNN) for face recognition. The performance of RBFNN depends on the design of the structure of RBFNN, which includes optimal center selection and spread of RBF units, number of neurons at hidden layer, weights etc. Design of hidden layer of RBFNN also includes the choice of basis functions which is proposed to be of Multiquadric basis functions. The shape of Multiquadric basis function plays an important role in the performance of RBFNN in face recognition. A novel evolutionary shape parameter optimization technique inspired by the attractiveness of the natural fireflies is proposed and is used in the design of Multiquadric basis functions for the given face database. The algorithm is tested on two benchmarked face databases ORL and Indian face databases. The proposed technique significantly outperforms the performance of the Gaussian basis functions based RBFNN in terms of face recognition accuracy.
多二次径向基函数神经网络人脸识别的进化设计
本文提出在径向基函数神经网络(RBFNN)的隐层使用多重二次基函数进行人脸识别。RBFNN的性能取决于RBFNN的结构设计,包括RBF单元的最优中心选择和扩展、隐藏层神经元的数量、权值等。RBFNN隐层的设计还包括基函数的选择,提出了多二次基函数的选择。多二次基函数的形状对RBFNN在人脸识别中的性能起着重要的作用。提出了一种受自然萤火虫吸引力启发的进化形状参数优化技术,并将其应用于给定人脸数据库的多二次基函数设计。在ORL和印度两个基准人脸数据库上对该算法进行了测试。该方法在人脸识别精度方面明显优于基于高斯基函数的RBFNN。
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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