Facial Recognition Payment System: An Effortless Payment Method in Public Transport Sector

Authors

  • Ng Yee Fei Asia Pacific University of Technology and Innovation (APU), Technology Park Malaysia, Bukit Jalil, 57000 Kuala Lumpur, Malaysia Author
  • Chandra Reka Ramachandiran Asia Pacific University of Technology and Innovation (APU), Technology Park Malaysia, Bukit Jalil, 57000 Kuala Lumpur, Malaysia Author

DOI:

https://doi.org/10.61841/q60w4834

Keywords:

Facial Recognition Payment, Biometrics, Public Transport System, Image Processing.

Abstract

 From the beginning, the traditional way of using public transport in Malaysia is only able to use physical cash to purchase a ticket. The technology nowadays is increase rapidly which transform to make payment from using cash to smart cards to prove their transactions. This transformation can save plenty of time, however, there are still some flaws of current technology. First of all, they will be charged a penalty if passengers have lost their physical ticket or card, and this may cause passengers to pay extra and not be able to arrive at the destination on time. Furthermore, passengers who buying a ticket manually have to wait a very long queue during peak session, such as working hours and public holidays, and this could cause the passenger a lot of inconvenience. To overcome these problems, this paper offers a new technology to enables passengers can ease to use and feel convenience to make payment in public transport by using facial recognition. This new technology was used in other countries, such as the purpose of security, but was never used in Malaysia. This paper also provides the methodology for gathering user acceptance in this new technology using interview and simple random sampling to evaluate the data. Overall, the payment system for facial recognition is the fastest and simplest way to improve efficiency in the public transport ticketing system 

Downloads

Download data is not yet available.

References

[1] Afaneh, A., Noroozi, F. &Toygar, Ö. J Image Video Proc. (2017) 2017: 81.

[2] Afiq Aziz (2018) Malaysians warm up to public transport — slowly, but surely. [Online]. Available

from:https://themalaysianreserve.com/2018/03/20/malaysians-warm-up-to-public-transport-slowly-butsurely/[Accessed: 14thApril 2019].

[3] Amos, B., Ludwiczuk, B. and Satyanarayanan, M., 2016. Openface: A general-purpose face recognition

library with mobile applications. CMU School of Computer Science, 6.

[4] Akhtar, Z., &Rattani, A. (2017). A Face in any Form: New Challenges and Opportunities for Face

Recognition Technology. Computer, 50(4), 80–90.

[5] Buciu, I. and Gacsadi, A., 2016. Biometrics systems and technologies: a survey. International Journal of

Computers Communications & Control, 11(3), pp.315-330.

[6] Hassaballah, M., & Aly, S. (2015). Face recognition: challenges, achievements and future directions. IET

Computer Vision, 9(4), 614–626.

[7] Hua, G., Yang, M., Learned-Miller, E.,et al.: ‗Introduction to the special section on real-world face

recognition‘, IEEE Trans. Pattern Anal. Mach. Intell., 2011,33, (10), pp. 1921–1924

[8] Jennifer Tucker (2014). How facial recognition technology came to be.[Online]. Available from:

https://www.bostonglobe.com/ideas/2014/11/23/facial-recognition-technology-goes-way-back/CkWaxzozv

FcveQ7kvdLHGI/story. html[Accessed: 19th April 2019]

[9] Lawrence, K., Campbell, R. and Skuse, D., 2015. Age, gender, and puberty influence the development of

facial emotion recognition. Frontiers in psychology, 6, p.761.

[10] Nikhil L. Kulkarni1, N.L.B., 2016. Human Age Estimation Using Facial Features Extraction. International

Journal on Emerging trends in technology, 3(3), p. 6009.

[11] Prasarana Malaysia Berhad (2019), Fares and Payment. [Online]. Avaible from:

https://www.myrapid.com.my/fares-and-payments/all-tickets/token [Accessed: 29th April 2019]

[12] Rutva Safi, 2019. Facial Recognition System- Future of Biometrics identification. [Online]. Available

from: https://apiumhub.com/tech-blog-barcelona/facial-recognition-biometrics-identification/

[13] Shakir Fattah Kak, Firas Mahmood Mustafa & Pedro Valente, 2018. A Review of Person Recognition

Based on Face Model. Eurasian Journal of Science and Engineering, 4(1), p. 158.

[14] YoanRigart-Lenisa (2018) Facial Recognition- The future of mobile payment in China. [Online]. Available

from:https://www.it-consultis.com/blog/facial-recognition-future-mobile-payments-china [Accessed: 19th

April 2019]

[15] P. Mary Jeyanthi, Santosh Shrivastava Kumar ―The Determinant Parameters of Knowledge Transfer among

Academicians in Colleges of Chennai Region‖, Theoretical Economics Letters, 2019, 9, 752-760, ISSN

Online: 2162-2086, DOI: 10.4236/tel.2019.94049, which is in B category of ABDC

List. https://www.scirp.org/journal/Home.aspx?IssueID=12251

[16] P. Mary Jeyanthi, ―An Empirical Study of Fraudulent and Bankruptcy in Indian Banking Sectors‖, The

Empirical Economics Letters, Vol.18; No. 3, March 2019, ISSN: 1681-8997, which is in C category of

ABDC List. http://www.eel.my100megs.com/volume-18-number-3.htm

[17] Mary Jeyanthi, S and Karnan, M.: ―Business Intelligence: Hybrid Metaheuristic techniques‖, International

Journal of Business Intelligence Research, - Volume 5, Issue 1, April-2014. URL: https://dl.acm.org/

citation.cfm?id=2628938; DOI: 10.4018/ijbir.2014010105, which is in C category of ABDC List.

[18] P. Mary Jeyanthi, ―INDUSTRY 4.O: The combination of the Internet of Things (IoT) and the Internet of

People (IoP)‖, Journal of Contemporary Research in Management, Vol.13; No. 4 Oct-Dec, 2018, ISSN:

0973-9785.

[19] P. Mary Jeyanthi, "The transformation of Social media information systems leads to Global business: An

Empirical Survey", International Journal of Technology and Science (IJTS), issue 3, volume 5, ISSN

Online: 2350-1111 (Online). URL: http://www.i3cpublications.org/M-IJTS-061801.pdf

[20] P. Mary Jeyanthi,‖ An Empirical Study of Fraud Control Techniques using Business Intelligence in

Financial Institutions‖, Vivekananda Journal of Research Vol. 7, Special Issue 1, May 2018, ISSN 2319-

8702(Print), ISSN 2456-7574(Online). URL: http://vips.edu/wp-content/uploads/2016/09/Special-IssueVJR-conference-2018.pdf Page no: 159-164.

[21] Mary Jeyanthi, S and Karnan, M.: ―Business Intelligence: Artificial bear Optimization

Approach‖, International Journal of Scientific & Engineering Research, Volume 4, Issue 8, August-2013.

URL: https://www.ijser.org/onlineResearchPaperViewer.aspx?Business-Intelligence-Artificial-BearOptimization-Ap-proach.pdf

[22] Mary Jeyanthi, S and Karnan, M.: ―Business Intelligence: Optimization techniques for Decision

Making‖, International Journal of Engineering Research and Technology, Volume 2, Issue 8, August-2013.

URL: https://www.ijert.org/browse/volume-2-2013/august-2013-edition?start=140

[23] Mary Jeyanthi, S and Karnan, M.: ―A New Implementation of Mathematical Models with metaheuristic

Algorithms for Business Intelligence‖, International Journal of Advanced Research in Computer and

Communication Engineering, Volume 3, Issue 3, March-2014. URL: https://ijarcce.com/wpcontent/uploads/2012/03/IJARCCE7F-a-mary-prem-A-NEW-IMPLEMENTATION.pdf

[24] Dr. Mary Jeyanthi: ―Partial Image Retrieval Systems in Luminance and Color Invariants: An Empirical

Study‖, International Journal of Web Technology (ISSN: 2278-2389) – Volume-4, Issue-2.

URL: http://www.hindex.org/2015/p1258.pdf

[25] Dr. Mary Jeyanthi: ―CipherText Policy attribute-based Encryption for Patients Health Information in Cloud

Platform‖, Journal of Information Science and Engineering (ISSN: 1016-2364)

[26] Mary Jeyanthi, P, Adarsh Sharma, Purva Verma: ―Sustainability of the business and employment

generation in the field of UPVC widows‖ (ICSMS2019).

[27] Mary Jeyanthi, P: ―An Empirical Survey of Sustainability in Social Media and Information Systems across

emerging countries‖, International Conference on Sustainability Management and Strategy”

(ICSMS2018).

[28] Mary Jeyanthi, P: ―Agile Analytics in Business Decision Making: An Empirical Study‖, International

Conference on Business Management and Information Systems” (ICBMIS2015).

[29] Mary Jeyanthi, S and Karnan, M.: ―Business Intelligence – soft computing Techniques‖, International

Conference on Mathematics in Engineering & Business Management (ICMEB 2012).

[30] Mary Jeyanthi, S and Karnan, M.: ―A Comparative Study of Genetic algorithm and Artificial Bear

Optimization algorithm in Business Intelligence”, International Conference on Mathematics in

Engineering & Business Management (ICMEB 2012).

[31] Mary Jeyanthi, S and Karnan, M.: ―Business Intelligence: Data Mining and Optimization for Decision

Making‖, 2011 IEEE International Conference on Computational Intelligence and Computing Research

(2011 IEEE ICCIC).

[32] Mary Jeyanthi, S and Karnan, M.: ―Business Intelligence: Data Mining and Decision making to overcome

the Financial Risk‖, 2011 IEEE International Conference on Computational Intelligence and Computing

Research (2011 IEEE ICCIC).

[33] Dr. Mary Jeyanthi, S: ―Pervasive Computing in Business Intelligence‖, State level seminar on Computing

and Communication Technologies. (SCCT-2015)

[34] Dr.P. Mary Jeyanthi, ―Artificial Bear Optimization (ABO) – A new approach of Metaheuristic algorithm

for Business Intelligence‖, ISBN no: 978-93-87862-65-4, Bonfring Publication. Issue Date: 01-Apr-2019

[35] Dr.P. Mary Jeyanthi, ―Customer Value Management (CVM) – Thinking Inside the box‖ – ISBN: 978-93-

87862-94-4, Bonfring Publication, Issue Date: 16-Oct-2019.

[36] Jeyanthi, P.M., & Shrivastava, S.K. (2019). The Determinant Parameters of Knowledge Transfer among

Academicians in Colleges of Chennai Region. Theoretical Economics Letters, 9(4), 752-760.

Downloads

Published

31.10.2019

How to Cite

Yee Fei, N., & Reka Ramachandiran, C. (2019). Facial Recognition Payment System: An Effortless Payment Method in Public Transport Sector. International Journal of Psychosocial Rehabilitation, 23(4), 1424-1433. https://doi.org/10.61841/q60w4834