DOI QR코드

DOI QR Code

Applicability and Adaptability of Gait-based Biometric Security System in GCC

  • S. M. Emdad Hossain (Department of Information Systems, CEMIS, University of Nizwa)
  • Received : 2024.09.05
  • Published : 2024.09.30

Abstract

Robust system may not guaranty its applicability and adaptability. That is why research and development go together in the modern research concept. In this paper we are going to examine the applicability and adaptability of gait-based biometric identity verification system especially in the GCC (Gulf Cooperation Council). The system itself closely involved with human interaction where privacy and personality are in concern. As of 1st phase of our research we will establish gait-based identity verification system and then we will explain them in and out of human interaction with the system. With involved interaction we will conduct an extensive survey to find out both applicability and adoptability of the system. To conduct our experiment, we will use UCMG databased [1] which is readily available for the research community with more than three thousand video sequences in different viewpoint collected in various walking pattern and clothing. For the survey we will prepare questioners which will cover approach of data collection, potential traits to collect and possible consequences. For analyzing gait biometric trait, we will apply multivariate statistical classifier through well-known machine learning algorithms in a ready platform. Similarly, for the survey data analysis we will use similar approach to co-relate the user view point for such system. It will also help us to find the perception of the user for the system.

Keywords

References

  1. E. Hossain, G. Chetty, Multimodal Biometric Database for Person Identification and Gait analysis, The International Journal of Intelligent Information Processing (IJIIP - November 2014)
  2. Si, Wen & Zhang, Jing & Li, Yu-Dong & Tan, Wei & Shao, Yi-Fan & Yang, Ge-Lan. (2020). Remote Identity Verification Using Gait Analysis and Face Recognition. Wireless Communications and Mobile Computing. 2020. 1-10. 10.1155/2020/8815461.
  3. Kavita C, Shouvik S, BIOMETRIC IDENTITY CARDS AS A TOOL FOR E-GOVERNANCE IN SULTANATE OF OMAN, International Journal of Economics, Management and Accounting 28, no. 2 (2020): 415-430 © 2020 by The International Islamic University Malaysia
  4. Andy Adler, Security and privacy issues in biometric systems, School of Information Technology and Engineering University of Ottawa, access date: December 2023
  5. Himanshu Gupta, Kapil Chauhan, Role of Biometric security for The Enhancement of Data Security, INTERNATIONAL JOURNAL OF COMPUTERS & TECHNOLOGY (October 2015), DOI: 10.24297/ijct.v14i10.1832
  6. Souhail Guennouni, Anass Mansouri and Ali Ahaitou, Visual Impairment and Blindness - What We Know and What We Have to Know, Biometric Systems and Their Applications DOI: http://dx.doi.org/10.5772/intechopen.84845
  7. Martin Drahansk, Filip Ors.g, Frantioek Zboril, Biometrics in Security Applications, Department of Intelligent Systems, Bouetechova 2, CZ-612 66 Brno, January 2004
  8. Bilal Khan, Muhammad Khurram Khan, Khaled S. Alghathbar, Biometrics and identity management for home land security applications in Saudi Arabia, International Journal of Banking, Economics and Finance ISSN: 8201-4728 Vol. 3 (1), pp. 001-011, January, 2019
  9. Biometric Attendance Systems, Revolutionizing Workforce Management in the Middle East, https://truein.com/, July 4, 2024, Truein | All rights reserved © 2024
  10. The digital ID, landscape in the GCC, A mapping of programs, regulations, and human rights risk, www.smex.org, A December 2021 Publication of SMEX.
  11. Karl Pearson F.R.S. . (1901). LIII. On lines and planes of closest fit to systems of points in space. The London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science, 2(11), 559-572. https://doi.org/10.1080/14786440109462720
  12. Holtel, Frederik (2023-02-20). "Linear Discriminant Analysis (LDA) Can Be So Easy". Medium. Retrieved 2024-05-18.
  13. Haykin, S. (1994). Neural networks: a comprehensive foundation. Prentice Hall PTR.
  14. S.M. E. Hossain, CHETTY, G. (2014). Multimodal Biometric Gait Database: A Comparison Study. Journal of Next Generation Information Technology, 5(4), 71-82. http://www.globalcis.org/jnit/ppl/JNIT338PPL.pdf