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ASYMBOOST-BASED FISHER LINEAR CLASSIFIER FOR FACE RECOGNITION

ASYMBOOST-BASED FISHER LINEAR CLASSIFIER FOR FACE RECOGNITION
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摘要 When using AdaBoost to select discriminant features from some feature space (e.g. Gabor feature space) for face recognition, cascade structure is usually adopted to leverage the asymmetry in the distribution of positive and negative samples. Each node in the cascade structure is a classifier trained by AdaBoost with an asymmetric learning goal of high recognition rate but only moderate low false positive rate. One limitation of AdaBoost arises in the context of skewed example distribution and cascade classifiers: AdaBoost minimizes the classification error, which is not guaranteed to achieve the asymmetric node learning goal. In this paper, we propose to use the asymmetric AdaBoost (Asym- Boost) as a mechanism to address the asymmetric node learning goal. Moreover, the two parts of the selecting features and forming ensemble classifiers are decoupled, both of which occur simultaneously in AsymBoost and AdaBoost. Fisher Linear Discriminant Analysis (FLDA) is used on the selected fea- tures to learn a linear discriminant function that maximizes the separability of data among the different classes, which we think can improve the recognition performance. The proposed algorithm is dem- onstrated with face recognition using a Gabor based representation on the FERET database. Ex- perimental results show that the proposed algorithm yields better recognition performance than AdaBoost itself. When using AdaBoost to select discriminant features from some feature space (e.g. Gabor feature space) for face recognition, cascade structure is usually adopted to leverage the asymmetry in the distribution of positive and negative samples. Each node in the cascade structure is a classifier trained by AdaBoost with an asymmetric learning goal of high recognition rate but only moderate low false positive rate. One limitation of AdaBoost arises in the context of skewed example distribution and cascade classifiers: AdaBoost minimizes the classification error, which is not guaranteed to achieve the asymmetric node learning goal. In this paper, we propose to use the asymmetric AdaBoost (Asym-Boost) as a mechanism to address the asymmetric node learning goal. Moreover, the two parts of the selecting features and forming ensemble classifiers are decoupled, both of which occur simultaneously in AsymBoost and AdaBoost. Fisher Linear Discriminant Analysis (FLDA) is used on the selected features to learn a linear discriminant function that maximizes the separability of data among the different classes, which we think can improve the recognition performance. The proposed algorithm is demonstrated with face recognition using a Gabor based representation on the FERET database. Experimental results show that the proposed algorithm yields better recognition performance than AdaBoost itself.
出处 《Journal of Electronics(China)》 2008年第3期352-357,共6页 电子科学学刊(英文版)
基金 Supported by the NSFC-RGC Joint Research Fund (No.60518002) Talent Promotion Foundation of Anhui Province (No.2004Z026) The Science Research Fund of MOE-Microsoft Key Laboratory of Multimedia Com-puting and Communication (No.05071811)
关键词 AsymBoost ADABOOST Gabor feature Face recognition 脸部识别技术 分类器 识别模式 判别方式
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参考文献11

  • 1Robert E. Schapire,Yoram Singer.Improved Boosting Algorithms Using Confidence-rated Predictions[J].Machine Learning.1999(3)
  • 2Y. Freund,and R. E. Schapire.A decision-theoretic generalization of on-line learning and an application to boosting[].Journal of Computer and System Sciences.1997
  • 3R. Schapire,and Y. Singer.Improving boosting algo- rithms using confidence-rated predictions[].Machine Learning.1999
  • 4J. Friedman,,T. Hastie,,and R. Tibshirani.Additive logistic regression: A statistical view of boosting[].The Annals of Statistics.2000
  • 5Peng Yang,Shiguang Shan,Wen Gao, et al.Face recognition using Ada-Boosted Gabor features[].Pro- ceeding of the th IEEE International Conference on Automatic Face and Gesture Recognition.2004
  • 6M. Jones,and P. Viola.Face recognition using boo- sted local features. TR2003-25 .
  • 7P. Viola,,and M. Jones.Robust real time object de- tection[].IEEE International Conference on Computer Vision Workshop on Statistical and Computational Theories of Vision July.132001
  • 8P. Viola,,and M. Jones.Fast and robust classification using asymmetric AdaBoost and a detector cascade[].Proceeding of the th Neural Information Processing Systems.2001
  • 9K. Fukunaga.Introduction to Statistical Pattern Recognition[]..1990
  • 10B. Moghaddam,,C. Nastar,,and A. Pentland.A Bayesian similarity measure for direct image matching[].Media Lab Tech Report No.1996

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