Open Access Open Access  Restricted Access Subscription or Fee Access

A wavelet based invigoration check in fingerprint scanners

Dr. Aditya Abhyankar, Dr. Stephanie Schuckers

Abstract


By virtue of using simple, inexpensive techniques it is possible to delude fingerprint scanners. An antidote against such fraudulent attacks is suggested in this paper. This work emphasizes on quantifying liveness for fingerprint scanners using wavelet energy analysis of fingerprint images. From the images captured at two time stamps the perspiration changes along the finger ridges are sensed and used as liveness measure. Multiresolution analysis and wavelet packet analysis is performed for low and high frequency data. Orthogonal Daubechies filters are designed to analyze the non-stationary information efficiently.Only those wavelet coefficient which experience an energy change of more than 40% are used for liveness after normalization. The proposed algorithm was applied to a data set of approximately 58 live, 50 spoof and 28 cadaver fingerprint images captured at 0 sec and 2 or 5 sec. The algorithm was tested for different underlying fingerprint sensing technologies including optical (secugen), optoelectrical (ethentica) and capacitive DC (precise biometrics). Classification results are presented for all the scanners and for both the time windows.


Keywords


fingerprints, spoofing, liveness, wavelet analysis, multiresolution analysis, wavelet packet analysis, energy distribution analysis.

Full Text:

PDF

References


J. D.Woodward, N. M. Orlans, and P. T. Higgins, Biometrics. McGraw-Hill/Osborne, 2003.

A. Jain, R. Bolle, and S. Pankanti, Biometrics: Personal Identification in Networked Society. Kluwer Academic Publisher, 1999.

D. Maltonie, D. Maio, A. K. Jain, and S. Prabhakar, Handbook of Fingerprint Recognition. Springer-Verlag New York, Inc., 2003.

S. Schuckers, “Spoofing and anti-spoofing measures,” in Information Security Technical Report, vol. 7, 2002, pp. 56–62.

T. Matsumoto, H. Matsumoto, K. Yamada, and S. Hoshino, “Impact of artificial ’gummy’ fingers on fingerprint systems,” in Proceedings of SPIE, vol. 4677, Jan 2002.

T. Putte and J. Keuning, “Biometrical fingerprint recognition: don’t get your fingers burned,” in Smart Card Research and Advanced Applications.Kluwer Academic Publisher, 2000, pp. 289–303.

D. Willis and M. Lee, “Biometrics under our thumb,” Network Computing,June 1998.

R. Derakshani, S. Schuckers, L. Hornak, and L. Gorman, “Determination of vitality from a non-invasive biomedical measurement for use in fingerprint scanners,” Pattern Recognition Journal, vol. 36, no. 2, 2003.

L. Thalheim and J. Krissler, “Body check: biometric access protection devices and their programs put to the test,” c’t magzine, Nov 2002.

V. Valencia and C. Horn, “Biometric liveness testing,” in Biometrics.McGraw-Hill/Osborne, 2003.

S. Parthasaradhi, R. Derakshani, L. Hornak, and S. Schuckers, “Timeseries detection of perspiration as a liveness test in fingerprint devices,,”IEEE Transactions on Systems, Man, and Cybernetics, Part C: Applications and Reviews,, vol. 36, no. 2, 2005.

A. Abhyankar and S. Schuckers, “Wavelet-based approach to detecting liveness in fingerprint scanners,” Proceedings of the SPIE Defense and Security Symposium, Biometric Technology for Human Identification,April 2004.

S. Schuckers and A. Abhyankar, “Detecting liveness in fingerprint scanners using wavelets: Results of the test dataset,” Proceedings of the Biometric Authentication Workshop, ECCV,, May 2004.

I. Daubechies, Ten Lectures on Wavelets. Society of Industrial and Applied Mathematics, 1998.

I. Daubechies, Y. Meyer, P. G. Lemerie-Rieusset, P. Techamitchian,G. Beylkin, R. Coifman, M. V. Wickerhauser, and D. Donoho, “Wavelet transform and orthonormal wavelet bases,” in Different Perspectives on Wavelets, vol. 47, San Antonio, Texas, Jan. 1993, pp. 1–33.

Y. Meyer, Wavelets: Algorithms and Applications. Society of Industrial and Applied Mathematics, 1993.

M. B. Ruskai, G. Beylkin, R. Coifman, I. Daubechies, S. Mallat,Y. Meyer, and L. Raphael, “Wavelet transform maxima and multiscale edges,” in Wavelets and Their Applications, Lowell, Massachusetts,1992, pp. 67–104.

I. Daubechies, Y. Meyer, P. G. Lemerie-Rieusset, P. Techamitchian,G. Beylkin, R. Coifman, M. V. Wickerhauser, and D. Donoho, “Bestadapted wavelet packet bases,” in Different Perspectives on Wavelets,vol. 47, San Antonio, Texas, Jan. 1993, pp. 155–171.

M. B. Ruskai, G. Beylkin, R. Coifman, I. Daubechies, S. Mallat,Y. Meyer, and L. Raphael, “Wavelets and filter banks for discretetime signal processing,” in Wavelets and Their Applications, Lowell,Massachusetts, 1992, pp. 17–52.

D. Osten, H. Carim, M. Arneson, and B. Blan, “Biometrics, personal authentication system,” US Patent #5,719,950, Feb 1998.

K. Seifried, “Biometrics - what you need to know,” Security portal, Jan 2001.

P. Lapsley, J. Less, D. Pare, and N. Hoffman, “Anti-fraud biometric sensor that accurately detects blood flow,” US Patent #5,737,439, April 1998.

P. Kallo, I. Kiss, A. Podmaniczky, and J. Talosi, “Detector for recognizing the living character of a finger in a fingerprint recognizing apparatus,” US Patent #6,175,64, Jan 2001.

S. Kurt, “Biometrics - what you need to know,” Security Portal 10, Jan 2001.

K. A. Nixon and R. K. Rowe, “Spoof detection using multispectral fingerprint imaging without enrollment,” in Proceedings of Biometric Symposium, Sept 2005.


Refbacks

  • There are currently no refbacks.


Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.