478Accesses
12Citations
Abstract
Unique and stable reference point is essential for registration and identification in automated fingerprint identification systems. Most existing methods for detecting reference points need to scan the fingerprint image or orientation field pixel by pixel or block by block to confirm a candidate reference point. The inherent complexity of this process makes those methods time-consuming. In this paper, we propose a two-step method to improve the efficiency of detecting reference points by (1) determining the singular point, i.e., the approximate position of the reference point, in a novel fast way; then (2) refining the reference point precisely in the local area of the singular point. In the first step, awalking algorithm is proposed which can walk directly to the singular point without scanning the whole fingerprint image and hence it is extremely fast. Then, in the local area around the singular point, an enhanced method based on mean-shift concept (EMS-based method) is designed to localize the reference point precisely. Experimental results on FVC2000 DB1a and DB2a databases validate that the proposed WEMS (Walking + EMS) method outperforms two state-of-the-art methods in terms of accuracy and efficiency.
This is a preview of subscription content,log in via an institution to check access.
Access this article
Subscribe and save
- Get 10 units per month
- Download Article/Chapter or eBook
- 1 Unit = 1 Article or 1 Chapter
- Cancel anytime
Buy Now
Price includes VAT (Japan)
Instant access to the full article PDF.






Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Areekul V, Boonchaiseree N (2008) Fast focal point localization algorithm for fingerprint registration. In: 3rd IEEE conference on industrial electronics and applications, IEEE, pp 2089–2094
Bazen AM, Gerez SH (2002) Systematic methods for the computation of the directional fields and singular points of fingerprints. IEEE Trans Pattern Anal Mach Intell 24(7):905–919
Belhadj F, Akrouf S, Harous S, Aoudia SA (2015) Efficient fingerprint singular points detection algorithm using orientation-deviation features. J Electron Imaging 24(3):033,016–033,016
Bian W, Luo Y, Xu D, Yu Q (2014) Fingerprint ridge orientation field reconstruction using the best quadratic approximation by orthogonal polynomials in two discrete variables. Pattern Recognit 47(10):3304–3313
Chen H, Pang L, Liang J, Liu E, Tian J (2011) Fingerprint singular point detection based on multiple-scale orientation entropy. IEEE Signal Process Lett 18(11):679–682
Dong L, Yang G, Yin Y, Xi X, Yang L, Liu F (2015) Finger vein verification with vein textons. Int J Pattern Recognit Artif Intell 29:1556003
Doroz R, Wrobel K, Palys M (2015) Detecting the reference point in fingerprint images with the use of the high curvature points. In: Intelligent information and database systems, Springer, pp 82–91
Fan L, Wang S, Wang H, Guo T (2008) Singular points detection based on zero-pole model in fingerprint images. IEEE Trans Pattern Anal Mach Intell 30(6):929–940
Hasan H, Abdul-Kareem S (2013) Fingerprint image enhancement and recognition algorithms: a survey. Neural Comput Appl 23(6):1605–1610
Hong L, Wan Y, Jain AK (1998) Fingerprint image enhancement: algorithm and performance evaluation. IEEE Trans Pattern Anal Mach Intell 20(8):777–789
Huang CY, Liu L, Hung DD (2007) Fingerprint analysis and singular point detection. Pattern Recognit Lett 28(15):1937–1945
Jin C, Kim H (2010) Pixel-level singular point detection from multi-scale Gaussian filtered orientation field. Pattern Recognit 43(11):3879–3890
Jirachaweng S, Hou Z, Yau WY, Areekul V (2011) Residual orientation modeling for fingerprint enhancement and singular point detection. Pattern Recognit 44(2):431–442
Le TH, Van HT (2012) Fingerprint reference point detection for image retrieval based on symmetry and variation. Pattern Recognit 45(9):3360–3372
Li D, Yue X, Wu Q, Kang W (2015) CPGF: core point detection from global feature for fingerprint. In: Biometric recognition, Springer, pp 224–232
Li Y, Mandal M, Lu C (2013) Singular point detection based on orientation filed regularization and Poincaré index in fingerprint images. In: 2013 IEEE international conference on acoustics, speech and signal processing (ICASSP), IEEE, pp 1439–1443
Liu M, Jiang X, Kot AC (2005) Fingerprint reference-point detection. EURASIP J Adv Signal Process 4:498–509
Liu T, Xie J, Yan W, Li P, Lu H (2015) Finger-vein recognition with modified binary tree model. Neural Comput Appl 26(4):969–977
Ma J, Jing XJ, Zhang B, Sun S (2010) An effective algorithm for fingerprint reference point detection. In: 2010 2nd international conference on advanced computer control (ICACC), IEEE, vol 2, pp 200–203
Maio D, Maltoni D, Cappelli R, Wayman JL, Jain AK (2002) Fvc 2000: fingerprint verification competition. IEEE Trans Pattern Anal Mach Intell 24(3):402–412
Maltoni D, Maio D, Jain AK, Prabhakar S (2009) Handbook of fingerprint recognition. Springer, Berlin
Mei Y, Cao G, Sun H, Hou R (2012) A systematic gradient-based method for the computation of fingerprints orientation field. Comput Electr Eng 38(5):1035–1046
Park CH, Lee JJ, Smith MJ, Park KH (2006) Singular point detection by shape analysis of directional fields in fingerprints. Pattern Recognit 39(5):839–855
Qi J, Liu S (2014) A robust approach for singular point extraction based on complex polynomial model. In: 2014 IEEE conference on computer vision and pattern recognition workshops (CVPRW), IEEE, pp 78–83
Ram S, Bischof H, Birchbauer J (2010) Modelling fingerprint ridge orientation using legendre polynomials. Pattern Recognit 43(1):342–357
Srinivasan V, Murthy N (1992) Detection of singular points in fingerprint images. Pattern Recognition 25(2):139–153
Tams B (2013) Absolute fingerprint pre-alignment in minutiae-based cryptosystems. In: 12th international conference of biometrics special interest group, IEEE, pp 1–12
Weng D, Yin Y, Yang D (2011) Singular points detection based on multi-resolution in fingerprint images. Neurocomputing 74(17):3376–3388
Yang G, Pang S, Yin Y, Li Y, Li X (2013a) Sift based iris recognition with normalization and enhancement. Int J Mach Learn Cybern 4(4):401–407
Yang J, Xie S, Yoon S, Park D, Fang Z, Yang S (2013b) Fingerprint matching based on extreme learning machine. Neural Comput Appl 22(3–4):435–445
Zhou J, Chen F, Gu J (2009) A novel algorithm for detecting singular points from fingerprint images. IEEE Trans Pattern Anal Mach Intell 31(7):1239–1250
Zhou S, Yin J (2014) Face detection using multi-block local gradient patterns and support vector machine. J Comput Inf Syst 10(4):1767–1776
Zhou SR, Yin JP, Zhang JM (2013) Local binary pattern (lbp) and local phase quantization (lbq) based on Gabor filter for face representation. Neurocomputing 116:260–264
Zhu E, Yin J, Zhang G (2005) Fingerprint matching based on global alignment of multiple reference minutiae. Pattern Recognit 38(10):1685–1694
Zhu E, Yin J, Hu C, Zhang G (2006a) A systematic method for fingerprint ridge orientation estimation and image segmentation. Pattern Recognit 39(8):1452–1472
Zhu E, Yin J, Zhang G, Hu C (2006b) A Gabor filter based fingerprint enhancement scheme using average frequency. Int J Pattern Recognit Artif Intell 20(03):417–429
Zhu E, Hancock E, Yin J, Zhang J, An H (2011) Fusion of multiple candidate orientations in fingerprints. In: Image analysis and recognition, Springer, pp 89–100
Acknowledgments
This work was financially supported by the National Natural Science Foundation of China (Project Nos. 60970034, 61170287, 61232016) and National Science Foundation of Hunan Province (Grant No. 2jj3069).
Author information
Authors and Affiliations
College of Computer, National University of Defense Technology, Changsha, 410073, China
Xifeng Guo & En Zhu
State Key Laboratory of High Performance Computing, National University of Defense Technology, Changsha, 410073, China
Jianping Yin
- Xifeng Guo
You can also search for this author inPubMed Google Scholar
- En Zhu
You can also search for this author inPubMed Google Scholar
- Jianping Yin
You can also search for this author inPubMed Google Scholar
Corresponding author
Correspondence toXifeng Guo.
Rights and permissions
About this article
Cite this article
Guo, X., Zhu, E. & Yin, J. A fast and accurate method for detecting fingerprint reference point.Neural Comput & Applic29, 21–31 (2018). https://doi.org/10.1007/s00521-016-2285-9
Received:
Accepted:
Published:
Issue Date:
Share this article
Anyone you share the following link with will be able to read this content:
Sorry, a shareable link is not currently available for this article.
Provided by the Springer Nature SharedIt content-sharing initiative