Real Time Eye Based Password Authentication

Authors

  • A Vani Dept. Of Computer Science & Engineering, Jyothy Institute of Technology, Bangalore, India
  • Gowhar A R Dept. Of Computer Science & Engineering, Jyothy Institute of Technology, Bangalore, India
  • Jeevika G S Dept. Of Computer Science & Engineering, Jyothy Institute of Technology, Bangalore, India
  • Sangeetha D Dept. Of Computer Science & Engineering, Jyothy Institute of Technology, Bangalore, India
  • Vallabh Mahale Dept. Of Computer Science & Engineering, Jyothy Institute of Technology, Bangalore, India

Keywords:

One Time Password, OTP, PIN, Security, Eye, Oculography, Password

Abstract

Although we are in 21st century with loads of improvement in the area of innovation security will be a main issue.  Individual distinguishing proof numbers are generally utilized for client validation and security. Secret phrase check  utilizing PINs expects clients to enter an actual PIN, which can be powerless against secret word breakage or hacking. by means of shoulder surfing or warm following. PIN validation with handsoff eye flickers PIN section methods, then again, abandons no actual impressions and thusly bid a safer secret word passage choice. In this paper, an eye understudy  squint-based PIN age framework has been concocted. Right away, the client enters delicate validation input (PIN) by  utilizing eye flicker developments, which further is inside planned into different example of digits from 0 to 9. Subsequently, snooping by a malevolent eyewitness turns out to be essentially incomprehensible. Eye flickers-based confirmation refers to observing the eye squints across successive picture outlines and creating the PIN. This task presents a constant application we join eye squint based PIN passage, and face recognition and OTP (One Time Password) to stay away from shoulder surfing and warm following assaults. 

Downloads

Download data is not yet available.

References

2018 IEEE International Conference on Consumer Electronics,

Mr Kaustubh.S. Sawant, Mr. Pange P.D has published “Real-time

eye tracking for password authentication using gaze based”.

R. Revathy and R. Bama, 2015, “Advanced Safe PIN-Entry

Against Human Shoulder-Surfing,” IOSR Journal of Computer

Engineering (IOSR-JCE), vol 17, issue 4, ver. II, pp. 9-15.

M. Mehrubeoglu, H. T. Bui and L. McLauchlan, “Real-time iris

tracking with a smart camera,” Proc. SPIE 7871, 787104, 2011.

M. Mehrubeoglu, L. M. Pham, H. T. Le, M. Ramchander, and D.

Ryu, “Real-time eye tracking using a smart camera,” Proc. 2011

IEEE Applied Imagery Pattern Recognition Workshop (AIPR

‘11), pp. 1-7, 2011.

D. Asonov and R. Agrawal, 2004, “Keyboard Acoustic

Emanations”, IEEE Symposium on Security and Privacy.

Oakland, California, pp. 3-11.

M. Mehrubeoglu, E. Ortlieb, L. McLauchlan, L.

M. Pham, “Capturing reading patterns through a real-time smart

camera iris tracking system,” Proc. SPIE, vol. 8437, id. 843705,

R. Revathy and R. Bama, “Advanced Safe PIN- Entry Against

Human Shoulder Surfing,” IOSR Journal of Computer

Engineering, vol 17, issue 4, ver. II, pp. 9-15, July-Aug 2015.

J. Weaver, K. Mock and B. Hoanca, “Gaze- Based Password

Authentication through Automatic Clustering of Gaze Points,”

Proc. 2011 IEEE Conf. on Systems, Man and Cybernetics, Oc

t.2011.

“ATM Fraud, ATM Black Box Attacks Spread Across Europe”,

European ATM Security Team (E.A.S.T.), online, posted 11

April 2017.

Smart Cameras for Embedded Machine Vision, (product

information) National Instruments

Downloads

Published

2022-06-13

How to Cite

[1]
A. Vani, G. A R, J. G S, S. D, and V. Mahale, “Real Time Eye Based Password Authentication”, pices, pp. 20-22, Jun. 2022.

Issue

Section

Articles