Face Recognition Based on Local Statistical Features and Artificial Neural Network

Mehdi Moghimi, H. Grailu
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Abstract

In this paper a face recognition method based on image segmentation, statistical features, and neural network is proposed which is composed of three main steps of (1) preprocessing, (2) extraction of statistical features including mean, standard deviation, skewness, and kurtosis, and (3) classification using a perceptron neural network with one hidden layer. The proposed method benefits the advantage of simplicity in implementation. In addition, the simulation results show that the proposed method could achieve the recognition accuracy of 99.8% which outperforms the competitive methods of principal component analysis (PCA) (8.25-13.34% improvement), k-nearest neighbors (11.95-17.54% improvement), local binary pattern (4.45-10.04% improvement), support vector machine (SVM) combined with the PCA (0.19-2.18% improvement), and convolutional neural network (up to 0.64% improvement).
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基于局部统计特征和人工神经网络的人脸识别
本文提出了一种基于图像分割、统计特征和神经网络的人脸识别方法,该方法由三个主要步骤组成:(1)预处理,(2)提取均值、标准差、偏度和峰度等统计特征,(3)使用具有一个隐藏层的感知器神经网络进行分类。该方法具有实现简单的优点。此外,仿真结果表明,该方法的识别准确率达到99.8%,优于主成分分析(PCA)(提高8.25-13.34%)、k近邻(提高11.95-17.54%)、局部二值模式(提高4.45-10.04%)、支持向量机与PCA结合(提高0.19-2.18%)和卷积神经网络(提高0.64%)等竞争方法。
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