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Design of radial basis function network as classifier in face recognition using eigenfaces

机译:基于特征脸的人脸识别中基于径向基函数网络的分类器设计

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In this paper we investigate alternative designs of a radial basis function network acting as classifier in a face recognition system. The inputs to the RBF network are the projections of a face image over the principal components. A database of 250 facial images of 25 persons is used for training and evaluation. Two RBF designs are studied: the forward selection and the Gaussian mixture model. Both designs are also compared to the conventional Euclidean and Mahalanobis classifiers. A set of experiments evaluates the recognition rate of each method as a function of the number of principal components used to characterize the image samples. The results of the experiments indicate that the Gaussian mixture model RBF achieves the best performance while allowing less neurons in the hidden layer. The Gaussian mixture model approach shows also to be less sensitive to the choice of the training set.
机译:在本文中,我们研究了在人脸识别系统中充当分类器的径向基函数网络的替代设计。 RBF网络的输入是面部图像在主要成分上的投影。 25个人的250张面部图像的数据库用于培训和评估。研究了两种RBF设计:正向选择和高斯混合模型。两种设计也都与常规的欧几里得分类和马氏混合分类器进行了比较。一组实验根据每种用于表征图像样本的主成分的数量来评估每种方法的识别率。实验结果表明,高斯混合模型RBF可以实现最佳性能,同时在隐藏层中允许较少的神经元。高斯混合模型方法也表明对训练集的选择不那么敏感。

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