首页> 外文会议>International Workshop on Multiple Classifier Systems(MCS 2007); 20070523-25; Prague(CZ) >Fusion of Support Vector Classifiers for Parallel Gabor Methods Applied to Face Verification
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Fusion of Support Vector Classifiers for Parallel Gabor Methods Applied to Face Verification

机译:支持向量分类器融合的并行Gabor方法在人脸验证中的应用

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摘要

In this paper we present a fusion technique for Support Vector Machine (SVM) scores, obtained after a dimension reduction with Bilateral-projection-based Two-Dimensional Principal Component Analysis (B2DPCA) for Gabor features. We apply this new algorithm to face verification. Several experiments have been performed with the public domain FRAV2D face database (109 subjects). A total of 40 wavelets (5 frequencies and 8 orientations) have been used. Each set of wavelet-convolved images is considered in parallel for the B2DPCA and the SVM classification. A final fusion is performed combining the SVM scores for the 40 wavelets with a raw average. The proposed algorithm outperforms the standard dimension reduction techniques, such as Principal Component Analysis (PCA) and B2DPCA.
机译:在本文中,我们提出了一种基于支持向量机(SVM)分数的融合技术,该技术是通过基于Gabor特征的基于双边投影的二维主成分分析(B2DPCA)进行降维后获得的。我们将此新算法应用于人脸验证。已经使用公共领域FRAV2D人脸数据库(109个对象)进行了一些实验。总共使用了40个小波(5个频率和8个方向)。对于B2DPCA和SVM分类,并行考虑每组小波卷积图像。结合40个小波的SVM得分和原始平均值进行最终融合。该算法优于标准降维技术,例如主成分分析(PCA)和B2DPCA。

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