Efficient Profile Matching Methods Using Convolution Neural Networks

  • Dr. S. Siamala Devi, Thiraimathi S., Sriabirami R., Sinega V

Abstract

Background: Biometrics are physical or behavioral human characteristics to that can be used to digitally identify a person to grant access to systems, devices or data. Face recognition can be a concept of biometric for safety approach. A profile describes a collection of properties, e.g. a group of abilities a person may additionally have, or a collection of talents a cricketer can also have with regard to a particular group strategy. Findings: The methodologies like Cascade Classifier and Convolution Neural Network are applied to detect face of a private. A comparison has been made among the above-mentioned methodologies and  therefore the inferred result shows that Convolution Neural Network has produced a far better performance. Therefore, CNN helps the input image to be matched with the profile in an efficient way.

Published
2020-06-01
How to Cite
Dr. S. Siamala Devi, Thiraimathi S., Sriabirami R., Sinega V. (2020). Efficient Profile Matching Methods Using Convolution Neural Networks. International Journal of Advanced Science and Technology, 29(8s), 4829 - 4834. Retrieved from http://sersc.org/journals/index.php/IJAST/article/view/27358