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MLP neural network based face recognition system using constructive training algorithm

机译:基于构造训练算法的基于MLP神经网络的人脸识别系统

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Face recognition is one of the most efficient applications of computer authentication and pattern recognition. Therefore it attracts significant attention of researchers. In the past decades, many feature extraction algorithms have been proposed. In this paper Gabor features and Zernike moment were used to extract features from human face images for recognition application. This paper is a study for new constructive training algorithm for Multi Layer Perceptron (MLP) which is applied to face recognition application. An incremental training procedure was employed where the training patterns are learned incrementally. This algorithm started with a single training pattern and a single hidden-layer using one neuron. During neural network training, the hidden neuron is increased when the Mean Square Error (MSE) of the Training Data (TD) is not reduced or the algorithm gets stuck in a local minimum. Input patterns are trained incrementally (one by one) until all patterns of TD are selected and trained. Face recognition system structure based on a MLP neural network was constructed and was tested for face recognition. The proposed approach was tested on the UMIST database. Experimental results indicate that we can obtain an optimal architecture of neural network classifier (with the least possible number of hidden neuron) using our present constructive algorithm, and prove the effectiveness of the proposed method compared to the MLP architecture with back-propagation algorithm.
机译:人脸识别是计算机身份验证和模式识别的最有效应用之一。因此,它引起了研究人员的极大关注。在过去的几十年中,已经提出了许多特征提取算法。在本文中,使用Gabor特征和Zernike矩从人脸图像中提取特征以进行识别。本文是针对多层感知器(MLP)的新型构造训练算法的研究,该算法应用于人脸识别应用。采用增量训练程序,其中逐步学习训练模式。该算法从单个训练模式和使用一个神经元的单个隐藏层开始。在神经网络训练过程中,当训练数据(TD)的均方误差(MSE)没有减少或算法陷入局部最小值时,隐藏的神经元就会增加。输入模式被逐步训练(一个接一个),直到所有TD模式都被选择和训练为止。构建了基于MLP神经网络的人脸识别系统结构,并进行了人脸识别测试。提议的方法已在UMIST数据库上进行了测试。实验结果表明,使用我们现有的构造算法,我们可以获得最优的神经网络分类器架构(具有尽可能少的隐藏神经元数量),并且与带反向传播算法的MLP架构相比,证明了该方法的有效性。

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