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Computer Engineering ›› 2012, Vol. 38 ›› Issue (7): 161-163,167. doi: 10.3969/j.issn.1000-3428.2012.07.053

• Networks and Communications • Previous Articles     Next Articles

Generalized Locality Discriminative Canonical Correlation Analysis Algorithm

LIU Yun-dong   1, CUI Lin   1, HAO Ru-gang   2   

  1. (1. School of Information Engineering, Suzhou University, Suzhou 234000, China; 2. School of Computer and Communication, Lanzhou University of Technology, Lanzhou 730050, China)
  • Received:2011-08-15 Online:2012-04-05 Published:2012-04-05

一种广义局部判别型典型相关分析算法

刘云东1,崔 琳1,郝汝岗2   

  1. (1. 宿州学院信息工程学院,安徽 宿州 234000;2. 兰州理工大学计算机与通信学院,兰州 730050)
  • 作者简介:刘云东(1979-),男,讲师、硕士,主研方向:信息处理;崔 琳,讲师、硕士;郝汝岗,硕士
  • 基金资助:
    安徽省高校优秀青年人才基金资助项目(2009SQRZ171, 2010SQRL192);安徽省教育厅自然科学基金资助项目(KJ2009B 121);安徽省高校省级自然科学基金资助项目(KJ2012Z395)

Abstract: On the basis of the Locality Discriminative Canonical Correlation Analysis(LDCCA), this paper proposes a new supervised learning algorithm called Generalized Locality Discriminative Canonical Correlation Analysis(GLDCCA) algorithm, which can utilize much effectively the class information of samples in the covariance matrix. Meanwhile , Kernel Principal Component Analysis(KPCA) is used to solve the small sample problem and avoid the linear constraint which PCA is subjected to. Experimental results on artificial data sets, facial database including ORL and Yale show that the proposed GLDCCA algorithm is superior to CCA, LDCCA in recognition performance.

Key words: face recognition, discriminative information, Canonical Correlation Analysis(CCA), feature dimension, feature fusion, within covariance matrix

摘要: 在局部鉴别典型相关分析(LDCCA)的基础上,提出一种广义局部判别型典型相关分析算法(GLDCCA)。该算法在准则函数的内协方差矩阵中引入样本类别信息,使其提取的特征更有利于模式分类,采用核主成份分析解决小样本问题,克服传统PCA所受到的线性约束。在人工数据集以及ORL和Yale 2个人脸库上进行实验,结果表明,与CCA算法和LDCCA算法相比,GLDCCA算法具有更高的识别性能。

关键词: 人脸识别, 鉴别信息, 典型相关分析, 特征维数, 特征融合, 内协方差矩阵

CLC Number: