A novel multiset integrated canonical correlation analysis framework and its application in feature fusion

Multiset canonical correlation analysis (MCCA) is difficult to effectively express the integrated correlation among multiple feature vectors in feature fusion. Thus, this paper firstly presents a novel multiset integrated canonical correlation analysis (MICCA) framework. The MICCA establishes a discriminant correlation criterion function of multi-group variables based on generalized correlation coefficient. The criterion function can clearly depict the integrated correlation among multiple feature vectors. Then the paper presents a multiple feature fusion theory and algorithm using the MICCA method. The detailed process of the algorithm is as follows: firstly, extract multiple feature vectors from the same patterns by using different feature extraction methods; then extract multiset integrated canonical correlation features using MICCA; finally form effective discriminant feature vectors through two given feature fusion strategies for pattern classification. The multi-group feature fusion method based on MICCA not only achieves the aim of feature fusion, but also removes the redundancy between features. The experiment results on CENPARMI handwritten Arabic numerals and UCI multiple features database show that the MICCA method has better recognition rates and robustness than the fusion methods based on canonical correlation analysis (CCA) and MCCA.

[1]  Mahmood R. Azimi-Sadjadi,et al.  A Multichannel Canonical Correlation Analysis Feature Extraction with Application to Buried Underwater Target Classification , 2006, The 2006 IEEE International Joint Conference on Neural Network Proceedings.

[2]  Hans Knutsson,et al.  Learning multidimensional signal processing , 1998, Proceedings. Fourteenth International Conference on Pattern Recognition (Cat. No.98EX170).

[3]  Alex Pentland,et al.  Bayesian face recognition , 2000, Pattern Recognit..

[4]  G. G. Stokes "J." , 1890, The New Yale Book of Quotations.

[5]  Quan Hong,et al.  Sub-pattern Canonical Correlation Analysis with Application in Face Recognition: Sub-pattern Canonical Correlation Analysis with Application in Face Recognition , 2008 .

[6]  H. Hotelling Relations Between Two Sets of Variates , 1936 .

[7]  Jian Yang,et al.  Generalized K-L transform based combined feature extraction , 2002, Pattern Recognit..

[8]  Duane B. Carter Analysis of Multiresolution Data fusion Techniques , 1998 .

[9]  P. Horst Generalized canonical correlations and their applications to experimental data. , 1961, Journal of clinical psychology.

[10]  David J. Kriegman,et al.  Eigenfaces vs. Fisherfaces: Recognition Using Class Specific Linear Projection , 1996, ECCV.

[11]  Allan Aasbjerg Nielsen,et al.  Multiset canonical correlations analysis and multispectral, truly multitemporal remote sensing data , 2002, IEEE Trans. Image Process..

[12]  Ah Chung Tsoi,et al.  Face recognition: a convolutional neural-network approach , 1997, IEEE Trans. Neural Networks.

[13]  Horst Bischof,et al.  Appearance models based on kernel canonical correlation analysis , 2003, Pattern Recognit..

[14]  Yun Fu,et al.  Multiple feature fusion by subspace learning , 2008, CIVR '08.

[15]  Pheng-Ann Heng,et al.  A theorem on the generalized canonical projective vectors , 2005, Pattern Recognit..

[16]  David Zhang,et al.  Face recognition based on a group decision-making combination approach , 2003, Pattern Recognit..

[17]  Robert G. D. Steel,et al.  Minimum Generalized Variance for a set of Linear Functions , 1951 .

[18]  Jian Yang,et al.  Feature fusion: parallel strategy vs. serial strategy , 2003, Pattern Recognit..

[19]  Pheng-Ann Heng,et al.  A Novel Feature Fusion Method Based on Partial Least Squares Regression , 2005, ICAPR.

[20]  Chen Yunhao,et al.  A new wavelet‐based image fusion method for remotely sensed data , 2006 .

[21]  M. Barker,et al.  Partial least squares for discrimination , 2003 .

[22]  Hong Chang,et al.  A Kernel Approach for Semisupervised Metric Learning , 2007, IEEE Transactions on Neural Networks.

[23]  Hu Zhong,et al.  HANDWRITTEN DIGIT RECOGNITION BASED ON MULTI-CLASSIFIER COMBINATION , 1999 .

[24]  Mahdieh Soleymani Baghshah,et al.  Non-linear metric learning using pairwise similarity and dissimilarity constraints and the geometrical structure of data , 2010, Pattern Recognit..

[25]  Josef Kittler,et al.  Discriminative Learning and Recognition of Image Set Classes Using Canonical Correlations , 2007, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[26]  Yang Jing-yu Multifeature Fusion Based on Fisher Discriminant Criterion , 2002 .

[27]  Fuad Rahman,et al.  A new multi-expert decision combination algorithm and its application to the detection of circumscribed masses in digital mammograms , 2001, Pattern Recognit..

[28]  Roger L. King,et al.  Estimation of the Number of Decomposition Levels for a Wavelet-Based Multiresolution Multisensor Image Fusion , 2006, IEEE Transactions on Geoscience and Remote Sensing.

[29]  Yan Liu,et al.  A new method of feature fusion and its application in image recognition , 2005, Pattern Recognit..

[30]  Hong Chang,et al.  Relaxational metric adaptation and its application to semi-supervised clustering and content-based image retrieval , 2006, Pattern Recognit..

[31]  Chong-sun Kim Canonical Analysis of Several Sets of Variables , 1973 .

[32]  M. Turk,et al.  Eigenfaces for Recognition , 1991, Journal of Cognitive Neuroscience.

[33]  Chengjun Liu,et al.  A shape- and texture-based enhanced Fisher classifier for face recognition , 2001, IEEE Trans. Image Process..

[34]  Chia Ks,et al.  Multivariate statistical analysis: a brief introduction. , 1999 .

[35]  D. Yeung,et al.  A Kernel Approach for Semi-Supervised Metric Learning , 2006 .

[36]  Anil K. Jain,et al.  Statistical Pattern Recognition: A Review , 2000, IEEE Trans. Pattern Anal. Mach. Intell..

[37]  Hong Quan Sub-pattern Canonical Correlation Analysis with Application in Face Recognition , 2008 .

[38]  Michael I. Jordan,et al.  Kernel independent component analysis , 2003, 2003 IEEE International Conference on Acoustics, Speech, and Signal Processing, 2003. Proceedings. (ICASSP '03)..

[39]  Pheng-Ann Heng,et al.  Improvements on CCA Model with Application to Face Recognition , 2004, Intelligent Information Processing.

[40]  Songcan Chen,et al.  Locality preserving CCA with applications to data visualization and pose estimation , 2007, Image Vis. Comput..