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Evaluation of unsupervised feature extraction neural networks for face recognition

机译:用于人脸识别的无监督特征提取神经网络的评估

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摘要

In this paper, new appearances based on neural networks (NN) algorithms are presented for face recognition. Face recognition is subdivided into two main stages: feature extraction and classifier. The suggested NN algorithms are the unsupervised Sanger principal component neural network (Sanger PCNN) and the self-organizing feature map (SOFM), which will be applied for features extraction of the frontal view of a face image. It is of interest to compare the unsupervised network with the traditional Eigenfaces technique. This paper presents an experimental comparison of the statistical Eigenfaces method for feature extraction and the unsupervised neural networks in order to evaluate the classification accuracies as comparison criteria. The classifier is done by the multilayer perceptron (MLP) neural network. Overcoming of the problem of the finite number of training samples per person is discussed. Experimental results are implemented on the Olivetti Research Laboratory database that contains variability in expression, pose, and facial details. The results show that the proposed method SOFM/MLP neural network is more efficient and robust than the Sanger PCNN/MLP and the Eigenfaces/MLP, when used a few number of training samples per person. As a result, it would be more applicable to utilize the SOFM/MLP NN in order to accomplish a higher level of accuracy within a recognition system.
机译:在本文中,提出了基于神经网络(NN)算法的新外观用于面部识别。人脸识别分为两个主要阶段:特征提取和分类器。所建议的NN算法是无监督的Sanger主成分神经网络(Sanger PCNN)和自组织特征图(SOFM),它们将用于面部图像正面视图的特征提取。有趣的是将无监督网络与传统的Eigenfaces技术进行比较。本文提出了一种用于特征提取的统计特征脸方法与无监督神经网络的实验比较,以评估分类准确性作为比较标准。分类器由多层感知器(MLP)神经网络完成。讨论了如何解决每人有限数量的训练样本的问题。实验结果在Olivetti研究实验室数据库中实现,该数据库包含表情,姿势和面部细节的变化。结果表明,在每人使用少量训练样本的情况下,所提出的方法SOFM / MLP神经网络比Sanger PCNN / MLP和Eigenfaces / MLP更有效,更健壮。结果,利用SOFM / MLP NN在识别系统中实现更高级别的准确性将更为适用。

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