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基于Gabor相位纹理表征的人脸识别方法

Face Recognition Method Based on Gabor Phase Texture Representation
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摘要 为降低Gabor特征的维数,提出一种基于Gabor相位的纹理表征(GPTR)方法,将其应用于人脸识别。GPTR采用广义高斯分布(GGD)拟合Gabor相位的分布,将拟合的GGD参数作为纹理特征。采用保局投影方法对纹理特征向量进行子空间分析,进一步降低其维数并增强鉴别力。在FERET及Yale人脸库上的实验结果表明,相比传统的Gabor幅值特征,GPTR具有更高的人脸识别准确率。 To reduce the dimensionality of the Gabor feature, this paper presents a novel approach called Gabor Phase-based Texture Representation(GPTR) for face recognition. GPTR is characterized by using the Generalized Gaussian Density(GGD) to model the Gabor phase distribution. The estimated model parameters serve as texture representation, which is then analyzed by Locality Preserving Projections(LPP) to make them more discriminative. Experimental results on FERET and Yale databases show that GPTR is superior to traditional Gabor features in terms of recognition accuracy.
出处 《计算机工程》 CAS CSCD 北大核心 2011年第24期147-149,共3页 Computer Engineering
基金 重庆市教委科技基金资助项目(KJ100815)
关键词 人脸识别 Gabor相位 纹理表征 广义高斯分布 保局投影 face recognition Gabor phase texture representation Generalized Gaussian Density(GGD) Locality Preserving Projection(LPP)
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参考文献9

  • 1Daugman J G. Uncertainty Relation for Resolution in Space, Spatial Frequency, and Orientation Optimized by Two-dimensional Visual Cortical Filters[J]. Journal of the Optical Society of America, 1985, 2(7): 1160-1169.
  • 2Liu Chenjun, Wechsler H. Gabor Feature Based Classification Using the Enhanced Fisher Linear Discriminant Model for Face Recognition[J]. IEEE Trans. on Image Processing, 2002, 11(4): 467-476.
  • 3柴智,刘正光.基于复小波和Gabor小波的人脸识别[J].计算机工程,2011,37(4):181-183. 被引量:5
  • 4Zhang Baochang, Shan Shiguang, Chen Xilin, et al. Histogram of Gabor Phase Patterns(HGPP): A Novel Object Representation Approach for Face Recognition[J]. IEEE Trans. on Image Processing, 2007, 16(1): 57-68.
  • 5Daugman J G. High Confidence Visual Recognition of Persons by a Test of Statistical Independence[J]. IEEE Trans. on Pattern Analysis and Machine Intelligence, 1993, 15(11): 1148-1161.
  • 6Ahonen T, Hadid A, Pietikainen M. Face Recognition with Local Binary Pattern[C] //Proc. of the 8th European Conference on Computer Vision. Prague, Czech Republic: [s. n.] , 2004: 469-481.
  • 7Do M N, Vetterli M. Wavelet-based Texture Retrieval Using Generalized Gaussian Density and Kullback-Leibler Distance[J]. IEEE Trans. on Image Processing, 2002, 11(2): 146-158.
  • 8He Xiaofei, Yan Shuicheng, Hu Yuxiao, et al. Face Recognition Using Laplacianfaces[J]. IEEE Trans. on Pattern Analysis and Machine Intelligence, 2005, 27(3): 328-340.
  • 9Turk M, Pentland A. Face Recognition Using Eigenfaces[C] //Proc. of Conference on Computer Vision and Pattern Recognition. [S. l.] : IEEE Press, 1991: 586-591.

二级参考文献4

  • 1Mutelo R, Woo W, Dlay S. Discriminant Analysis of the Two- dimensional Gabor Features for Face Recognition[J]. IET Computer Vision, 2008, 2(2): 37-49.
  • 2Liu Chaochun, Dai Daoqing. Face Recognition Using Dual-tree Complex Wavelet Features[J]. IEEE Transactions on Image Processing, 2009, 18(11): 2593-2599.
  • 3Selesnick I, Baraniuk R, Kingsbury N. The Dual-tree Complex Wavelet Transform[J]. IEEE Signal Processing Magazine, 2005, 22(6): 123-151.
  • 4叶剑华,刘正光.基于LBP和Fisherfaces的多模态人脸识别[J].计算机工程,2009,35(11):193-195. 被引量:16

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