期刊文献+

增强联系鉴别分析及在人脸识别中的应用(英文)

Enhanced Relation Discriminant Analysis and Its Application in Face Recognition
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摘要 针对人脸识别中的小样本问题,本文提出了一种名为增强联系鉴别分析的方法并应用人脸识别中。该方法利用将人脸局部流形的结构信息和样本的类别信息进行有效地结合进行维数约简,首先构建人脸数据的近邻图与类别联系图,然后通过解决在一定约束条件下的优化问题来获取低维鉴别流形特征,实现在低维空间中同一类人脸数据聚集,不同类别间的人脸数据间尽可能发散,从而可以更好的应用于分类。在AT&T和Yale人脸图像数据库上的实验结果表明该方法能有效的提高人脸识别的性能。 Automatic face recognition is a challenging problem in the biometrics area,where the small sample size problem exists. An Enhanced Relation Discriminant Analysis (ERDA) method is proposed to solve the small sample size problem. In our framework,the neighbor and class relations of data are used to construct the embedding for classification problems. The proposed algorithm learns the embedding for the submanifold of each class by solving an optimization problem. After being embedded into a low-dimensional subspace,data points tend to move due to local intra-class attraction or inter-class repulsion. ERDA aims to map the image space into a submanifold that faithfully discovers the local discriminative manifold structure of face image. This method accounts for both the representation and the classification points of views. Experimental results on the ATT and Yale face image databases demonstrate the effectiveness of the method.
出处 《光电工程》 CAS CSCD 北大核心 2010年第1期76-81,共6页 Opto-Electronic Engineering
基金 重庆科委自然基金资助项目(CSTC.2009BB2195)
关键词 人脸识别 维数约简 流形学习 流形鉴别分析 face recognition dimensionality reduction manifold learning manifold discriminant analysis
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参考文献11

  • 1HUANG Huang, LI Jian-wei, FENG Hai-liang. Subspaces versus submanifolds: a comparative study in small sample size problem [J]. International Journal of Pattern Recognition And Artificial Intefligence(S 1793-6381), 2009, 23(3): 463-490.
  • 2Ruiz-del-Solar J, Navarrete P. Eigenspace-based face recognition: a comparative study of different approaches [J]. IEEE Trans. Systems, Man and Cybernetics: Part C(S1083-4427), 2005, 35(3): 315-325.
  • 3Zhang W C, Shan S G, Chen X L, et al. Local gabor binary patterns based on kullback-leibler divergence for partially occluded face [J]. IEEE Signal Processing Letter (S1070-9908), 2007, 14(11): 875-878.
  • 4朱明旱,罗大庸,王一军.基于监督式等距映射的人脸和表情识别[J].光电工程,2009,36(1):146-150. 被引量:4
  • 5Roweis S, Saul L K. Nonlinear dimensional reduction by locally linear embedding [J]. Science (S0036-8075), 2000, 290(5500): 2323-2326.
  • 6Tenenbaum J B, Silva V de, Langford J C. A global geometric framework for nonlinear dimensional reduction [J]. Science (S0036-8075), 2000, 290(5500): 2319-2323.
  • 7He X F, Niyogi P. Locality preserving projections[C]//Proceedings of Advances in Neural Information Processing systems, Cambridge, USA: MITPress, 2004, 16: 153-160.
  • 8Yan S C, HU Y X, Xu D, et al. Nonlinear Discriminant analysis on embedded manifold [C]// Proceedings of 8th European Conf. Computer Vision, Prague, Czech Republic, 2004: 468-477.
  • 9Dick R, Olga K, Okun O, et al. Supervised locally linear embedding [C]// Proceedings of ICANN/ICONIP, 2003, Springer-Verlag, Berlin, 2003: 333-341.
  • 10He X F, Yan S C, Hu Y X, et al. Face recognition using Laplacianfaces [J]. IEEE Trans. Pattern Anal. Mach. Intell. (S1057-7149), 2005, 27(3): 328-340.

二级参考文献13

  • 1Ekman P. Facial Expressions of Emotion: an Old Controversy and New Findings [J]. Philosophical Transactions of the Royal Society(S0962-8436), 1992, 335(1273): 63-69.
  • 2Tian Y, Kanade T, Cohn J. Recognizing Action Units for Facial Expression Analysis [J]. IEEE Transactions on Pattern Analysis and Machine Intelligence(S0162-8828), 2001, 23(2): 97-115.
  • 3Franco L, Treves A. A Neural Network Facial Expression Recognition System Using Unsupervised Local Processing [C]// International Symposinm on Image and Signal Processing and Analysis. Pula, Croatia, June 19-21,2001: 628-632.
  • 4Cohen I, Sebe N, Garg A, et al. Facial Expression Recognition from Video Sequences: Temporal and Static Modeling [J]. Computer Vision and Image Understanding(S1077-3142), 2003, 91(1): 160-187.
  • 5Fasel B, Luettin J. Automatic Facial Expression Analysis: a Survey [J]. Pattern Recognition(S0031-3203), 2003,36: 259-275.
  • 6Alex M, Vasilescu O, Demetri Terzopoulos. Multilinear Analysis of Image Ensembles: TensorFaces [C]// Proceedings of the 7th European Conference on Computer Vision. London, UK: Springer-Verlag, 2002, 1: 447-460.
  • 7Gralewski L, Campbell N, Penton-Voak I. Using a Tensor Framework for the Analysis of Facial Dynamics [C]// 7th International Conference on Automatic Face and Gesture Recognition, 2006. FGR 2006, Southampton, UK, April 10-12, 2006: 217-222.
  • 8Chang Y, Hu C, Feris R, et al. Manifold Based Analysis of Facial Expression [J]. Image and Vision Computing(S0262-8856), 2006, 24(6): 605-614.
  • 9CHANG Ya, HU Chang-bo, Turk M. Probabilistic Expression Analysis on Manifolds [J]. Proceedings of the 2004 IEEE Computer Society Conference on Computer Vision and Pattern Recognition(S1063-6919), 2004, 2: 520-527.
  • 10Lee C S, Elgammal A. Facial Expression Analysis Using Nonlinear Decomposable Generative Models [J]. Lecture Notes in Computer Science(S0302-9743), 2005, 3723: 17-31.

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