Date of Publication :20th November 2017
Abstract: Fingerprint recognition is among the most common techniques used in biometrics Fingerprint recognition, the issue of scanning and matching fingerprints from the database. Biometrics security system has become increasingly popular nowadays and many companies are looking to have access to this technology to improve their environment's security measures, privacy, and confidentiality. There are numerous algorithms and techniques that have provided accurate results for the fingerprint recognition system. Fingerprints have been widely and effectively used for proof of identity in recent years. Because it is authentic, stable through life, unique among the people, public acceptance and least risk of invasion. Fingerprint technology is used to identify a person based on their physical attributes, which is a bio-metric system. Fingerprint matching is the most common biometric technique used to provide authentication. First, fingerprint identification process scans an unprocessed image, performs pre-processing and then features of those images are identified as vectors and protected as image records in fingerprint databases. A broad study on various features of fingerprint recognition systems is explained in this paper.
Reference :
-
- E. Marasco and A. Ross, “A survey on antispoofing schemes for fingerprint recognition systems,” ACM Comput. Surv., 2014, doi: 10.1145/2617756.
- C. Sousedik and C. Busch, “Presentation attack detection methods for fingerprint recognition systems: A survey,” IET Biometrics, 2014, doi: 10.1049/ietbmt.2013.0020.
- M. M. H. Ali, V. H. Mahale, P. Yannawar, and A. T. Gaikwad, “Overview of fingerprint recognition system,” in International Conference on Electrical, Electronics, and Optimization Techniques, ICEEOT 2016, 2016, doi: 10.1109/ICEEOT.2016.7754900.
- A. K. Jain, J. Feng, and K. Nandakumar, “Fingerprint matching,” Computer (Long. Beach. Calif)., 2010, doi: 10.1109/MC.2010.38.
- S. R. Borra, G. J. Reddy, and E. S. Reddy, “A broad survey on fingerprint recognition systems,” in Proceedings of the 2016 IEEE International Conference on Wireless Communications, Signal Processing and Networking, WiSPNET 2016, 2016, doi: 10.1109/WiSPNET.2016.7566372.
- H. Hasan and S. Abdul-Kareem, “Fingerprint image enhancement and recognition algorithms: A survey,” Neural Comput. Appl., 2013, doi: 10.1007/s00521- 012-1113-0.
- N. Anot and K. K. Singh., “A REVIEW ON BIOMETRICS AND FACE RECOGNITION TECHNIQUES.,” Int. J. Adv. Res., 2016, doi: 10.21474/ijar01/522.
- S. Memon, N. Manivannan, A. Noor, W. Balachadran, and N. V. Boulgouris, “Fingerprint sensors: Liveness detection issue and hardware based solutions,” Sensors and Transducers. 2012.
- S. Bana and D. Kaur, “Fingerprint Recognition Using Image Segmentation,” Int. J. Adv. Eng. Sci. Technol., 2011.
- O. Grinenko et al., “A fingerprint of the epileptogenic zone in human epilepsies,” Brain, 2018, doi: 10.1093/brain/awx306.
- Udit Jindal, Sheifali Gupta, Vishal Jain, Marcin Paprzycki, “Offline Handwritten Gurumukhi Character Recognition System Using Deep Learning, “Advances in Bioinformatics, Multimedia, and Electronics Circuits and Signals, Springer, page no. 121 to 133, October, 2019 12. Uttam Singh Bist, Mani
- Uttam Singh Bist, Manish Kumar, Anupam Baliyan, Vishal Jain, “Decision based Cognitive Learning using Strategic Game Theory”, Indian Journal of Science and Technology, Volume 9, Issue 39, October 2016, page no. 1-7 having ISSN No. 0974- 6846
- Vishal Jain, Gagandeep Singh, Dr. Mayank Singh, “Implementation of Data Mining in Online Shopping System using TANAGRA Tool”, International Journal for Computer Science Engineering (IJCSE), USA, January 2013 page no. 47-58 having ISSN No. 2278- 9979.
- S.Balamurugan, Dr.P.Visalakshi, V.M.Prabhakaran, S.Charanyaa, S.Sankaranarayanan, “Strategies for Solving the NP-Hard Workflow Scheduling Problems in Cloud Computing Environments”, Australian Journal of Basic and Applied Sciences, 8(16): 345-355, 2014