Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

Fingerprint Verification in Personal Identification by Applying Local Walsh Hadamard Transform and Gabor Coefficients


Affiliations
1 Department of Electronics and Communication Engineering, Mewar University, India
2 Department of Electronics and Communication Engineering, S.D. College of Engineering and Technology, India
     

   Subscribe/Renew Journal


In an era of advanced computer technology world where innumerable services such as access to bank accounts, or access to secured data or entry to some national important organizations require authentication of genuine individual. Among all biometric personal identification systems, fingerprint recognition system is most accurate and economical technology. In this paper we have proposed fingerprint recognition system using Local Walsh Hadamard Transform (LWHT) with Phase Magnitude Histograms (PMHs) for feature extraction. Fingerprints display oriented texture-like patterns. Gabor filters have the property of capturing global and local texture information from blur or unclear images and filter bank provides the orientation features which are robust to image distortion and rotation. The LWHT algorithm is compared with other two approaches viz., Gabor Coefficients and Directional Features. The three methods are compared using FVC 2006 Finger print database images. It is found from the observation that the values of TSR, FAR and FRR have improved results compared to existing algorithm.

Keywords

Fingerprint, Gabor Filters, LWHT, FAR, FRR.
Subscription Login to verify subscription
User
Notifications
Font Size

  • Anil K. Jain, Karthik Nandakumar, Xiaoguang Lu and Unsang Park, “Integrating Faces, Fingerprints, and Soft Biometric Traits for User Recognition”, Proceedings of Biometric Authentication Workshop, pp. 259-269, 2004.
  • Y.J. Wang and K.N. Plataniotis, “An Analysis of Random Projection for Changeable and Privacy-Preserving Biometric Verification”, IEEE Transactions on Systems, MAN and Cybernetics - PART B: CYBERNETICS, Vol. 40, No. 5, pp. 1280-1293, 2010.
  • Ru Zhou, SangWoo Sin, Dongju Li, Tsuyoshi Isshiki and Hiroaki Kunieda, “Adaptive SIFT-Based Algorithm for Specific Fingerprint Verification”, Proceedings of IEEE International Conference on Hand-Based Biometrics, pp. 1-6, 2011.
  • Suman Sahu, A. Prabhakar Rao and Saurabh Tarun Mishra, “Fingerprints based Gender Classification using Adaptive Neuro Fuzzy Inference System”, Proceedings of IEEE International Conference on Communications and Signal Processing, pp. 1218-1222, 2015.
  • Xunqiang Tao, Xin Yang, Yali Zang, Xiaofei Jia and Jie Tian, “The Enhancement of Low Quality Fingerprint based on Fractional Calculus Mask”, Proceedings of IEEE 5th International Conference on Biometrics, pp. 164-169, 2012.
  • Carlos A. de Luna-Ortega, Jorge A. Ramirez-Marquez, Miguel Mora-Gonzalez, Julio Cesar Martinez-Romo and Cesar A. Lopez-Luevano, “Fingerprint Verification using the Center of Mass and Learning Vector Quantization”, Proceedings of IEEE 12th Mexican International Conference on Artificial Intelligence, pp. 123-127, 2013.
  • Mohammed S. Khalil, Muhammad Khurram Khan and Muhammad Imran Razzak, “Co-Occurrence Matrix features for Fingerprint Verification”, Proceedings of IEEE International Conference on Anti-Counterfeiting, Security and Identification, pp. 43-46, 2011.
  • Omid Zanganeh, Bala Srinivasan and Nandita Bhattacharjee, “Partial Fingerprint Matching through Region-Based Similarity”, Proceedings of IEEE International Conference on Digital Image Computing:Techniques and Applications, pp. 1-8, 2014.
  • V. Vaidehi, N.T. Naresh Babu, A Ponsamuel Mervin, S Praveen Kumar, S. Velmurugan Balamurali and Girish Chandra, “Fingerprint Identification using Cross Correlation of Field Orientation”, Proceedings of IEEE 2nd International Conference on Advanced Computing, pp. 66-69, 2010.
  • B.N. Lavanya, K.B. Raja, D.R. Soumya and G.S. Sreedhar, “Fingerprint Verification based on Dual Transformation Technique”, Proceedings of IEEE 5th International Conference on Internet Multimedia Systems Architecture and Application, pp. 1-6, 2011.
  • Victor Teoh De Zhi and Shahrel Azmin Suandi, “Finger Code for Identity Verification using Fingerprint and Smart Card”, Proceedings of IEEE 10th Asian Control Conference, pp. 1-6, 2015.
  • Satishkumar Chavan, Parth Mundada and Devendra Pal, “Fingerprint Authentication using Gabor filter based Matching Algorithm”, Proceedings of IEEE International Conference on Technologies for Sustainable Development, pp. 1-6, 2015.
  • Amna Saeed, Anam Tariq and Usman Jawaid, “Automated System for Fingerprint Image Enhancement using Improved Segmentation and Gabor Wavelets”, Proceedings of International Conference on Information and Communication Technologies, pp. 1-6, 2011.
  • Priti S. Sanjekar and Priyadarshan S. Dhabe, “Fingerprint Verification using HAAR Wavelet”, Proceedings of IEEE 2nd International Conference on Computer Engineering and Technology, Vol. 3, pp. 361-365, 2010.
  • Davit Kocharyan and Hakob Sarukhanyan, “High Speed Fingerprint Recognition Method”, Proceedings of IEEE International Conference on Multimedia Technology, pp. 5892-5895, 2011.
  • Pinki Agrawal, Ravikant Kapoor and Sanjay Agrawal, “A Hybrid Partial Fingerprint Matching Algorithm for Estimation of Equal Error Rate”, Proceedings of IEEE International Conference on Advanced Communication Control and Computing Technologies, pp. 1295-1299, 2014.
  • Ekberjan Derman and Mehmet Keskinoz, “Normalized Cross-Correlation based Global Distortion Correction in Fingerprint Image Matching”, Proceedings of IEEE International Conference on Systems, Signals and Image Processing, pp. 1-4, 2016.
  • J.G. Daugman, “Uncertainty Relation for Resolution in Space, Spatial Frequency, and Orientation Optimized by Two-Dimensional Cortical filters”, Journal of Optical Society of America, Vol. 2, No. 7, pp. 1160-1169, 1985.
  • J.P. Jones and L.A. Palmer, “An Evaluation of the Two-Dimensional Gabor filter Model of Simple Receptive fields in Cat Striate Cortex”, Journal of Neurophysiology, Vol. 58, No. 6, pp. 1233-1258, 1987.
  • Yiming Ji, Kai H Chang and Chi-Cheng Hung, “Efficient Edge Detection and Object Segmentation using Gabor Filters”, Proceedings of ACM 42nd Annual South East Regional Conference, pp. 454-459, 2004
  • L. Wiskott, J.M. Fellous, N. Kruger and C. Von Der Malsburg, “Face Recognition by Elastic Bunch Graph Matching”, IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 19, No. 7, pp. 775-779, 1997.
  • Meryem Uzun-Per and Muhittin Gokmen, “Face Recognition with a Novel Image Representation: Local Walsh-Hadamard Transform”, Proceedings of 5th IEEE European International Conference on Visual Information Processing, pp. 1-6, 2014.
  • K.G. Beauchamp, “Applications of Walsh and related Functions with an Introduction to Sequence Theory”, Academic Press, 1984.
  • D.R. Shashi Kumar, K.B. Raja, R.K. Chhotaray and Sabyasachi Pattanaik, “DWT Based Fingerprint Recognition using Non Minutiae Features”, International Journal of Computer Science Issues, Vol. 8, No. 2, pp. 257-265, 2011.
  • Gualberto Aguilar, Gabriel Sanchez, Karina Toscano, Moises Salinas, Mariko Nakano and Hector Perez, “Finger Print Recognition”, Proceedings of 2nd IEEE International Conference on Internet Monitoring and Protection, pp. 1-5, 2007.
  • Nguyen Thi Huong Thuy, Hoang Xuan Huan and Nguyen Ngoc Ky, “An Efficient Method for Fingerprint Matching based on Local Point Model”, Proceedings of IEEE International Conference on Computing, Management and Telecommunications, pp. 334-339, 2013.
  • M.M.H. Ali, V.H. Mahale, P. Yannawar and A.T. Gaikwad, “Fingerprint Recognition for Person Identification and Verification based on Minutiae Matching”, Proceedings of IEEE 6th International Advanced Computing Conference, pp. 332-339, 2016.

Abstract Views: 239

PDF Views: 3




  • Fingerprint Verification in Personal Identification by Applying Local Walsh Hadamard Transform and Gabor Coefficients

Abstract Views: 239  |  PDF Views: 3

Authors

K. N. Pushpalatha
Department of Electronics and Communication Engineering, Mewar University, India
Arvind Kumar Gautam
Department of Electronics and Communication Engineering, S.D. College of Engineering and Technology, India

Abstract


In an era of advanced computer technology world where innumerable services such as access to bank accounts, or access to secured data or entry to some national important organizations require authentication of genuine individual. Among all biometric personal identification systems, fingerprint recognition system is most accurate and economical technology. In this paper we have proposed fingerprint recognition system using Local Walsh Hadamard Transform (LWHT) with Phase Magnitude Histograms (PMHs) for feature extraction. Fingerprints display oriented texture-like patterns. Gabor filters have the property of capturing global and local texture information from blur or unclear images and filter bank provides the orientation features which are robust to image distortion and rotation. The LWHT algorithm is compared with other two approaches viz., Gabor Coefficients and Directional Features. The three methods are compared using FVC 2006 Finger print database images. It is found from the observation that the values of TSR, FAR and FRR have improved results compared to existing algorithm.

Keywords


Fingerprint, Gabor Filters, LWHT, FAR, FRR.

References