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A comparative analysis of different neural networks for face recognition using principal component analysis, wavelets and efficient variable learning rate

机译:使用主成分分析,小波和有效变量学习率对不同神经网络进行人脸识别的比较分析

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This paper proposes a new way to find the optimum learning rate that reduces the training time and increases the recognition accuracy of the back propagation neural network as well as single layer feed forward Neural Network. It involves feature extraction using principal component analysis and wavelet decomposition and then classification by creation of back propagation neural network. Paper gives a comparative analysis of performance of back propagation neural network and single layer feed forward neural network. In this approach variable learning rate is used and its superiority over constant learning rate is demonstrated. Different inner epochs for different input patterns according to their difficulty of recognition are assigned to patterns. The effect of optimum numbers of inner epochs, best variable learning rate and numbers of hidden neurons on training time and recognition accuracy are also shown. We run our algorithm for face recognition application using Coiflet wavelets, principal component analysis, neural network and demonstrate the effect of numbers of hidden neurons on training time and recognition accuracy for given numbers of input patterns. We use ORL database for all the experiments.
机译:本文提出了一种寻找最佳学习率的新方法,该方法可以减少训练时间并提高反向传播神经网络以及单层前馈神经网络的识别精度。它涉及使用主成分分析和小波分解进行特征提取,然后通过创建反向传播神经网络进行分类。本文对反向传播神经网络和单层前馈神经网络的性能进行了比较分析。在这种方法中,使用了可变学习率,并且证明了它比恒定学习率的优越性。根据输入模式的识别难度,将用于不同输入模式的不同内部历元分配给模式。还显示了最佳内循环次数,最佳可变学习率和隐藏神经元数目对训练时间和识别精度的影响。我们使用Coiflet小波,主成分分析,神经网络运行了用于人脸识别的算法,并针对给定数量的输入模式,证明了隐藏神经元数量对训练时间和识别精度的影响。我们将ORL数据库用于所有实验。

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