Paper Title : Biometric based ATM System: A Survey
ISSN : 2394-2231
Year of Publication : 2022
10.5281/zenodo.6409959
MLA Style: Biometric based ATM System: A Survey " Subhrajit Roy, Dr. Pawan Kumar " Volume 9 - Issue 2 International Journal of Computer Techniques (IJCT) ,ISSN:2394-2231 , www.ijctjournal.org
APA Style: Biometric based ATM System: A Survey " Subhrajit Roy, Dr. Pawan Kumar " Volume 9 - Issue 2 International Journal of Computer Techniques (IJCT) ,ISSN:2394-2231 , www.ijctjournal.org
Abstract
Biometrics-based authentication is a potential alternative to password-based authentication. Of all biometric methods, face-based identification is one of the most convenient one. In ATM systems, facial images are captured using a high resolution camera. Bank security measures can play an important role in preventing customer attacks. These measures are of paramount importance in addressing the weaknesses of civil lawsuits. Banks must meet the criteria to provide their customers with a secure banking environment. This white paper focuses on the increased vulnerability and criminal activity of automated teller machines (ATMs), not the banks themselves. Both customers and bankers.
Reference
1. “J.J.Patoliya et al. , "Face Detection based ATM Security System utilizing Embedded Linux Platform ", second International Conference for Convergence in Technology (I2CT), (2017).” 2. “M.Karovaliyaa et al., "Improved security for ATM machine with OTP and Facial recognition features", International Conference on Advanced Computing Technologies and Applications (ICACTA), (2015).” 3. “Sivakumar T et al., " Plan and Implementation of Security-Based ATM burglary Monitoring framework", International Journal of Engineering Inventions, Volume 3, Issue 1, (2013). “ 4. “C. Bhosale et al., "ATM security utilizing face and unique finger impression acknowledgment", International Journal of Research in Engineering, Technology and Science, vol. 7, Special Issue, Feb. (2017).” 5. “Manoj V et al. MultiAuthentication ATM Theft Prevention Using iBeacon", International Research Journal of Engineering and Technology (IRJET), 71.” 6. “L. Wang et al. " Face acknowledgment utilizing most extreme nearby fisher discriminant investigation", eighteenth IEEE International Conference on Image Processing, (2011).” 7. “K.Shailaja et al. , "Successful Face Recognition utilizing Deep Learning-based Linear Discriminant Classification ", IEEE International Meeting on Computational Intelligence and Computing Research, (2016).” 8. “H. R. Babaei et al. , "Face Recognition Application for Automatic Teller Machines (ATM)", International Conference on Information and Knowledge Management (ICIKM) , (2012).” 9. “Aru et al. “Facial Verification Technology for Use In ATM Transactions” American Journal of Engineering Research (AJER) e-ISSN :2320-0847p-ISSN:2320-0936 Volume02, Issue-05. (2013).” 10. “Archana et al., “Enhance the Security in the ATM System with Multimodal Biometrics and Two-Tier Security”, International Journal of Advanced Research in Computer Science and Software Engineering 3(10), pp. 261- 266, October (2013)."
Keywords
— Automated Teller Machine(ATM), Camera, Verification, Crime, E-Banking.