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鹿鹏, 袁运浩, 葛洪伟. 利用相对强度的监督典型相关分析算法[J]. 计算机辅助设计与图形学学报, 2016, 28(2): 288-294.
引用本文: 鹿鹏, 袁运浩, 葛洪伟. 利用相对强度的监督典型相关分析算法[J]. 计算机辅助设计与图形学学报, 2016, 28(2): 288-294.
Lu Peng, Yuan Yunhao, Ge Hongwei. Supervised Canonical Correlation Analysis with Relative Strength[J]. Journal of Computer-Aided Design & Computer Graphics, 2016, 28(2): 288-294.
Citation: Lu Peng, Yuan Yunhao, Ge Hongwei. Supervised Canonical Correlation Analysis with Relative Strength[J]. Journal of Computer-Aided Design & Computer Graphics, 2016, 28(2): 288-294.

利用相对强度的监督典型相关分析算法

Supervised Canonical Correlation Analysis with Relative Strength

  • 摘要: 典型相关分析(CCA)是一种无监督的子空间学习算法,加入标签信息可以提高典型相关特征的判别力.为了有效地利用样本的标签信息,借鉴相对属性的思想,提出一种利用相对强度的监督CCA(SCCA)算法.该算法在使得2组典型投影之间具有最大的相关系数的同时,典型投影的每一维特征的大小能够表示不同样本在其上的相对强度;采用异类样本间在每个低维特征上的差异大于同类样本间差异的策略,使得典型投影的每个特征都具有较好的鉴别力.在多特征手写体数字、人脸图像以及一般对象数据库上的实验结果表明,SCCA算法具有较好的识别效果,优于已有的典型相关特征抽取算法.

     

    Abstract: Canonical correlation analysis(CCA) is an unsupervised subspace learning algorithm. The discriminative power of extracted CCA features can be improved by introducing label information of samples in recognition. Borrowing the idea of relative attributes, we propose a relative strength based supervised CCA algorithm to effectively exploit the label information of multi-view data. The proposed algorithm not only makes the correlation between two-set canonical projections maximum, but also their every component capable of describing the relative strength between different samples. The extracted canonical features by our algorithm are very discriminative in classification due to the use of the strategy that the difference between inter-class samples is larger than that between intra-class samples. Many experimental results on handwritten digit, face and object image datasets show that the proposed algorithm has better performance than existing canonical correlation feature extraction algorithms.

     

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