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Reseach Article

Fusion of Zernike Moments and SIFT Features for Improved Face Recognition

Published on April 2012 by Chandan Singh, Ekta Walia, Neerja Mittal
International Conference on Recent Advances and Future Trends in Information Technology (iRAFIT 2012)
Foundation of Computer Science USA
IRAFIT - Number 6
April 2012
Authors: Chandan Singh, Ekta Walia, Neerja Mittal
0669f220-4b99-49e7-8946-188868ee9ce7

Chandan Singh, Ekta Walia, Neerja Mittal . Fusion of Zernike Moments and SIFT Features for Improved Face Recognition. International Conference on Recent Advances and Future Trends in Information Technology (iRAFIT 2012). IRAFIT, 6 (April 2012), 26-31.

@article{
author = { Chandan Singh, Ekta Walia, Neerja Mittal },
title = { Fusion of Zernike Moments and SIFT Features for Improved Face Recognition },
journal = { International Conference on Recent Advances and Future Trends in Information Technology (iRAFIT 2012) },
issue_date = { April 2012 },
volume = { IRAFIT },
number = { 6 },
month = { April },
year = { 2012 },
issn = 0975-8887,
pages = { 26-31 },
numpages = 6,
url = { /proceedings/irafit/number6/5890-1046/ },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 International Conference on Recent Advances and Future Trends in Information Technology (iRAFIT 2012)
%A Chandan Singh
%A Ekta Walia
%A Neerja Mittal
%T Fusion of Zernike Moments and SIFT Features for Improved Face Recognition
%J International Conference on Recent Advances and Future Trends in Information Technology (iRAFIT 2012)
%@ 0975-8887
%V IRAFIT
%N 6
%P 26-31
%D 2012
%I International Journal of Computer Applications
Abstract

Combining the feature sets that are invariant to global as well as to local variations of face images would be an efficient approach to construct an optimal face recognition system. Thus, identification and combination of complementary feature sets has become an active topic of research in recent days. In this paper, a combination of two useful methods, i.e. Zernike Moments (ZMs) and Scale Invariant Feature Transform (SIFT) has been proposed for the recognition of face images wherein the global information of face images has been effectively extracted by the ZMs approach while SIFT descriptor is used to locate local distinct keypoints. Exhaustive experiments are performed on ORL and Yale face databases. It has been observed that the proposed fusion achieves 98.5% and 91.67% recognition rates on ORL and Yale databases respectively. The inherent characteristics of ZMs and SIFT are retained in the combined descriptor and therefore the proposed approach is highly robust against pose, illumination and expression variations.

References
  1. Zhang, X. and Gao, Y. 2009 Face recognition across pose: A review. Pattern Recognition, 42: 2876-2896.
  2. Abate, A.F., Nappi, M., Riccio, D. and Sabatino, G. 2007 2D and 3D face recognition: A survey. Pattern Recognition, 28: 1885-1906.
  3. Hjelmas, E. and Low, B.K. 2001 Face detection: A survey. Computer vision and Image Understanding, 83: 236-274.
  4. Teague, M. R. 1980 Image analysis via the general theory of moments. Journal of Optical Society of America, 70: 920-930.
  5. Singh, C. 2006 Improved quality of reconstructed images using floating point arithmetic for moment calculation. Pattern Recognition, 39: 2047-2064.
  6. Wee, C–Y. and Paramesran, R. 2007 On the computational aspects of Zernike moments. Image and Visual Computing, 25: 967-980.
  7. Nor'aini, A. J., Raveendran, P. and Selvanathan, N. 2006 Human face recognition using Zernike moments and nearest neighbor classifier. In Procedings of 4th student Conf. on Research and Development, 27-28 June Selangor: 120-123.
  8. Nor'aini, A. J., Raveendran, P. and Selvanathan, N. 2006 A comparative analysis of Zernike moments and Principal Components Analysis as feature extractors for face recognition. In Proceedings of 3rd Kuala Lumpur International Conf. on Biomedical Engineering: 37-41.
  9. Singh, C., Walia, E. and Mittal, N. 2011 Magnitude and phase coefficients of Zernike and Pseudo Zernike moments for robust face recognition. In Proceedings of the IASTED International Conf. on Computer Vision (CV 2011),1-3 June Vancouver, BC, Canada: 180-187.
  10. Zhang, D. and Lu, G. 2004 Review of shape representation and description techniques. Pattern Recognition, 37: 1-19.
  11. Zhang, D. and Lu, G. 2003 Evaluation of MPEG-7 shape descriptors against other shape descriptors. Multimedia Systems, 9: 15-30.
  12. Singh, C., Mittal, N. and Walia, E. 2011 Face Recognition using Zernike and Complex Zernike Moment Features. Pattern Recognition and Image Analysis, 21(1): 71-81.
  13. Singh, C., Walia, E. and Mittal, N. 2011 Rotation Invariant Complex Zernike Moments Features and their Application to Human Face and Character Recognition. IET Computer Vision, 5 (5): 255-265.
  14. Lajevardi, S.M. and Hussain, Z.M. 2010 Higher order orthogonal moments for invariant facial expression recognition. Digital Signal Processing, 20: 1771-1779.
  15. Lowe, D. G. 2004 Distinctive Image Features from Scale-Invariant Keypoints. International Journal of Computer Vision, 60 (2): 91-110.
  16. Bicego, M., Lagorio, A., Grosso, E. and Tistarelli, M, 2006 On the use of SIFT features for face authentication. In Proceedings of the International IEEE workshop on Biometric Authentication, IEEE Computer Society Press.
  17. Li, Z., Park, U. and Jain, A.K. 2011 A Discriminative Model for Age Invariant Face Recognition. IEEE Transactions on Information Forensics and Security, 6 (3): 1028-1037.
  18. Geng, C. and Jiang, X., 2011 Face recognition based on the multi-scale local image structures. Pattern Recognition, 44: 2565-2575.
  19. Huang, L., Shimizu, A. and Kobatake, H. 2005 Robust face detection using Gabor filter features. Pattern Recognition Letters, 26 (11): 1641-1649.
  20. Ojala, T. and Pietikäinen, M. 2002 Multiresolution Gray-Scale and Rotation Invariant Texture Classification with Local Binary Patters. IEEE Transactions on Pattern Analysis and Machine Intelligence, 24 (7): 971-987.
  21. Ahonen, T., Hadid, A. and Pietikäinen, M. 2006 Face Description with Local Binary Patterns: Application to Face Recognition. IEEE Transactions on Pattern Analysis and Machine Intelligence, 28 (12): 2037-2041.
  22. Tan, X. and Triggs, B. 2010 Enhanced Local Texture Feature Sets for Face Recognition Under Difficult Lighting Conditions. IEEE Transactions on Image Processing, 19 (6): 1635-1648.
  23. Kim, C., Oh, J. and Choi, C. 2005 Combined Subspace Method Using Global and Local features For Face Recognition. In Proceedings of IEEE International Joint Conf. on Neural Networks, 31 July Montreal Canada, 4: 2030-2035.
  24. Fang, Y., Tan, T. and Wang, Y. 2002 Fusion of Global and Local Features for Face Verification. In Proceedings of IEEE Conf. on Pattern Recognition, 2: 382-385.
  25. Zhou, D., Yang, X., Peng, N. and Wang, Y. 2006 Improved-LDA based face recognition using both facial global and local information. Pattern Recognition Letters, 27: 536-543.
  26. Su, Y., Shan, S., Chen, X. and Gao, W. 2009 Hierarchical Ensemble of Global and Local Classifiers for Face Recognition. IEEE Transactions on Image Processing, 18 (8):1885-1895.
  27. Olivetti Research Laboratory (ORL) and Yale face databases http://www.face-rec.org/databases/
  28. Xu, Y., Zhang, D., Yang, J. and Yang, J. –Y. 2008 An approach for directly extracting features from matrix data and its application in face recognition. Neurocomputing, 71: 1857-1865.
  29. Wang, Y. and Wu, Y. 2010 Face recognition using Intrinsicfaces. Pattern Recognition, 43: 3580-3590.
Index Terms

Computer Science
Information Sciences

Keywords

Zernike Moments (zms) Scale Invariant Feature Transform(sift) Invariant Features Global Features Local Features Face Recognition