首页> 外文会议>Proceedings of the 2006 International Conference on Computational Intelligence and Security (CIS 2006) >A Novel Model for Independent RBF Neural Networks Employing Gabor-based Kernel PCA with Fractional Power Polynomial Models for Feature Extraction
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A Novel Model for Independent RBF Neural Networks Employing Gabor-based Kernel PCA with Fractional Power Polynomial Models for Feature Extraction

机译:基于Gabor核PCA和分数次幂多项式模型的独立RBF神经网络模型用于特征提取

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A novel model for independent radial basis function (IRBF) neural network employing Gabor-based kernel PCA with fractional power polynomial models for feature extraction is proposed in this paper. In the new model, a bank of Gabor filters is first built to extract Gabor face representations characterized by selected frequency, locality and orientation to cope with various illuminations, facial expression and poses in face recognition. After extracting Gabor face representations for every face sample, a kernel PCA with fractional power polynomial models is chosen to extract high-order statistical features of extracted Gabor face representations. At last, a new IRBF neural network is built to classify these extracted high-order statistical features of Gabor face representations. According to the experiments on the famous CAS-PEAL face database, our proposed approach could outperform PCA, ICA with architecture II (ICA2) and kernel PCA (KPCA) with standing testing sets proposed in the current release disk of the CAS-PEAL face database.
机译:提出了一种基于Gabor核PCA和分数次幂多项式模型的独立径向基函数(IRBF)神经网络模型,用于特征提取。在新模型中,首先建立了一组Gabor滤波器,以提取具有选定频率,局部性和方向特征的Gabor面部表示,以应对面部识别中的各种照明,面部表情和姿势。在为每个人脸样本提取Gabor人脸表示后,选择具有分数幂多项式模型的内核PCA来提取所提取Gabor人脸表示的高阶统计特征。最后,建立了一个新的IRBF神经网络,以对这些提取的Gabor人脸表示的高阶统计特征进行分类。根据著名的CAS-PEAL人脸数据库的实验,我们提出的方法可以胜过PCA,具有体系结构II(ICA2)的ICA和具有在CAS-PEAL人脸数据库的当前发行版中提出的独立测试集的内核PCA(KPCA)。 。

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