Wavelet Transform and Fusion of Linear and Non Linear Method for Face Recognition

M. Mazloom, S. Kasaei, Nourolhoda Alemi Neissi
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引用次数: 6

Abstract

This work presents a method to increase the face recognition accuracy using a combination of Wavelet, PCA, KPCA, and RBF Neural Networks. Preprocessing, feature extraction and classification rules are three crucial issues for face recognition. This paper presents a hybrid approach to employ these issues. For preprocessing and feature extraction steps, we apply a combination of wavelet transform, PCA and KPCA. During the classification stage, the Neural Network (RBF) is explored to achieve a robust decision in presence of wide facial variations. At first derives a feature vector from a set of downsampled wavelet representation of face images, then the resulting PCA-based linear features and KPCA- based nonlinear features on wavelet feature vector for reduces the dimensionary of the vector, are extracted. During the classification stage, the Neural Network (RBF) is explored to achieve a robust decision in presence of wide facial variations. The computational load of the proposed method is greatly reduced as comparing with the original PCA, KPCA, ICA and LDA based method on the ORL, Yale and AR face databases. Moreover, the accuracy of the proposed method is improved.
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小波变换与线性与非线性融合人脸识别方法
本文提出了一种结合小波、PCA、KPCA和RBF神经网络来提高人脸识别精度的方法。预处理、特征提取和分类规则是人脸识别的三个关键问题。本文提出了一种混合方法来解决这些问题。在预处理和特征提取步骤中,我们将小波变换、PCA和KPCA相结合。在分类阶段,探索神经网络(RBF)在存在广泛面部变化的情况下实现鲁棒决策。首先从一组下采样的人脸图像的小波特征向量中提取特征向量,然后得到基于pca的线性特征和基于KPCA的非线性特征,对小波特征向量进行降维,提取特征向量。在分类阶段,探索神经网络(RBF)在存在广泛面部变化的情况下实现鲁棒决策。与基于ORL、Yale和AR人脸数据库的原始PCA、KPCA、ICA和LDA方法相比,该方法的计算量大大减少。此外,该方法的精度得到了提高。
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