The Implementation of Touchless Fingerpint Verification System to Prevent Epedemic Transmission

Asogwa Tochukwu Chijindu

Abstract


Communicable diseases are (bacteria, virus, infections and fungi) that can be transferred directly or indirectly from one person to another (mostly as a result of body contact). This work presents a means to help prevent this epidemic transmission in biometric devices, using a Touchless finger print verification system. This is presented to replace the conventional fingerprint scanner that requires direct contact from the query personnel for fingerprint acquisition and verification. This work will be developed using image acquisition tools, image processing tools, and machine learning technique. Mathlab will be used for the system implementation and a direct changeover style is recommended for the immediate use.

Full Text:

PDF

References


Nigerian educational research and development council (NERDC) 2003. Scheme for basic education (grade 1-3)

http:// www.sciencefocus.com

John A., Jamie B., Yves C. and Jackie S., (2009) Water sanitation and hygiene standards for schools in low cost settings. Genevea , Switzerland.

Chulhan Lee, Sanghoon Lee and Jaihie Kin (2006); A study of Touchless fingerprint recognition system. Yonsei Univeristy, Korea.

http://www.wikipedia.com/wikipedia project/2019

Martin D., Michal D., Jaroslav U., Eva B., and Tai-hoon K., (2012); influence of skin disease on fingerprint recognition; Journal of biomedical and biotechnology.

K. Wolff, R. A. Johnson, and D. Suurmond, Fitzpatrick’s Color Atlas and Synopsis of Clinical Dermatology, McGraw-Hill, New York, NY, USA, 5th edition, 2005.

W. D. James, T. G. Berger, and D. M. Elston, Andrew’s Diseases of the Skin—Clinical Dermatology, Elsevier Saunders, Ontario, Canada, 10th edition, 2006.

J. Štork et al., Dermatovenerologie, Galén, Prague, Czech Republic, 2008

T. Matsumoto, H. Matsumoto, K. Yamada, and S. Hoshino, ”Impact of artificial ”gummy” fingers on fingerprint systems”, In Proceedings of SPIE Vol. Num.4677, Jan 2002.

Chioma O (2018). Implementation Of Daugman’s Algorithm And Adaptive Noise Filtering Technique For Digital Recognition Of Identical Twin Using Mathlab,

Asogwa T.C and Ituma C. (2018); the application of machine learning for digital recognition of identical twins to support global crime investigation.

Ambrose A. Azeta, Nicholas A. Omoregbe, Adewole Adewumi, Dolapo Oguntade, Design of a Face Recognition System for Security Control. International Conference on African Development Issues (CU-ICADI) 2015: Information and Communication Technology Track. Department of Computer and Information Sciences, Covenant University, Ota, Ogun-State, Nigeria




DOI: https://doi.org/10.23956/ijarcsse.v9i7.1043

Refbacks

  • There are currently no refbacks.




© International Journals of Advanced Research in Computer Science and Software Engineering (IJARCSSE)| All Rights Reserved | Powered by Advance Academic Publisher.