Abstract
Single-modal biometrics has certain inherent problems such as noisy sensor data, non-universality of biometric traits, restricted degrees of freedom and the stability of the single algorithm itself. In order to overcome these problems and obtain a satisfactory recognition rate while maintaining high robustness, an effective solution is to employ multi-modal biometrics. Specifically, single-modal biometric multiple representation fusion is a form of multi-modal biometrics, which involves using multiple representations on a single biometric indicator. Moreover, multiple representation fusion is actually feature fusion. The key to feature fusion is how to deal with the local uncertainty. Drawing lessons from the human cognitive process, manifold, is introduced in order to realize a smooth transition from local to global on the basis of topology. In this paper, we present a novel scheme for fusing the Palmprint Mixed-Phase Features and the Palmprint Directional Valley Features, termed Shape of Gaussian (SOG) matching, which yields equivalent results to the feature fusion approaches employed in previous work. Furthermore, since SOGs form a Lie group, and Lie group is an important kind of manifold, a distance metric for SOG based on Lie group theory is adopted. Experimental results illustrate the effectiveness of the proposed approach.




Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Zhang R, Yu CB. Research on multimodal handmetric recognition. Master’s dissertation of Chongqing Institute of Technology; 2008.
Brunelli R, Falavigna D. Person identification using multiple cues. IEEE Trans Pattern Anal Mach Intell. 1995;17(10):955–66.
Li J, Yu WX. The research on face recognition approaches of infrared imagery. Doctor’s dissertation of National University of Defence Technology; 2005.
Zhang D, Kong WK, You J, Wong M. Online palmprint identification. IEEE Trans Pattern Anal Mach Intell. 2003;25(9):1041–50.
Zhang DD. Palmprint authentication. Springer US. 2004;3.
Wen CZ, Zhang JS. Research on palmprint recognition based on Log-Gabor filter. Master dissertation of Southwest Jiaotong University; 2008.
Wu XQ, Wang KQ, Zhang D. Palmprint recognition using valley features. International Conference on Machine Learning Cybernetics. 2005;8:4881–85.
Gong LY, Wang TJ, Liu F. Shape of Gaussians as feature descriptors. IEEE Computer Society Conference on Computer Vision Pattern Recognition Workshops. 2009;2366–71.
Chen JS, Moon YS. Using SIFT features in palmprint authentication. 19th International Conference on Pattern Recognition 2008;1–4.
Fan L, Duan H, Long F. Face recognition subspace analysis of 2D Log-Gabor wavelets features. 3rd International Conference on Intelligent System and Knowledge Engineering. 2008;1:1167–72.
Liang KH, Tjahjadi T, Yang YH. Roof edge detection using regularized cubic B-Spline fitting. Pattern Recogn. 1997;30(5):719–28.
Haralick RM. Ridge and valleys on digital images. Comput Vision Graphics Image Process. 1983;22:28–33.
Zhao T, Gong HL. Realization of tophat transform and bothat transform of mathematical morphology. Inf Technol. 2008;5:149–51.
Wu XQ, Zhang D, Wang KQ. Palmprint recognition. Science Publishing House, Beijing; 2006.
Mumford D. Mathematical theories of shape: do they model perception? Proceedings of SPIE Conference on Geometric Methods Comput Vision. 1991;1570:2–10.
Gong JQ, Gong JB, Tian JW. Probabilistic shape descriptor for 2-D point pattern matching. (Accepted, 2010).
Rubner Y, Tomasi C, Guibas LJ. The earth Mover’s distance as a metric for image retrieval. Int J Comput Vision. 2000;40(2):99–121.
Forstner W, Moonen B. A metric for covariance matrices. Technical report, Department of Geodesy and Geoinformatics, Stuttgart University; 1999.
Tuzel O, Porikli F, Meer P. Pedestrian detection via classification on Riemannian manifolds. IEEE Trans Pattern Anal Mach Intell. 2008;30(10):1713–27.
Wu XQ, Wang KQ, Zhang FM, Zhang D. Fusion of phase and orientation information for palmprint authentication. Proceedings of the International Conference on Image Processing. 2005;2:29–32.
PolyU Palmprint Database. http://www.comp.polyu.edu.hk/~biometrics/.
Heng Y, Qing W. A novel local feature descriptor for image matching. IEEE Int Confer Multimedia Expo. 2008;1405–08.
Xu H. Research and application on lie group machine learning models. Master dissertation of Soochow University; 2007.
Maio D, Maltoni D, Cappelli R, Wayman JL, Jain A. FVC2000: Fingerprint verification competition. IEEE Trans Pattern Anal Machine Intell. 2002;24(3):402–12.
Wu XQ, Wang KQ, Zhang D. Fusion of multiple features for palmprint authentication. Proceedings of International Conference on Machine Learning Cybernetics. 2006;3260–65.
Acknowledgments
This work is supported by the Project of the National Natural Science Foundation of China under Grant No. 60736010.
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Zheng, P. Gaussian Shape Descriptor for Palmprint Authentication. Cogn Comput 2, 303–311 (2010). https://doi.org/10.1007/s12559-010-9054-3
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s12559-010-9054-3