Adaptive of the bee algorithm with an overall pattern extractor to improve the fingerprint matching process

Authors

  • Ebrahim Omar Al-Shami Department of Automatic Control and Computers Engineering | Faculty of Mechanical and Electrical Engineering | Al Baath University | Syria
  • Marah Bassem Ali Department of Automatic Control and Computers Engineering | Faculty of Mechanical and Electrical Engineering | Al Baath University | Syria

Keywords:

Fingerprints
Matching
Bee Algorithm
Artificial Intelligence
Swarm Intelligence

Abstract

Fingerprints serve as a crucial biometric identifier for verifying individual identities, particularly in the context of developing automatic fingerprint recognition systems. This study addresses the imperative need to enhance fingerprint matching accuracy while concurrently mitigating false acceptance rate (FAR) and rejection rate (RR) challenges inherent in traditional matching methods. The research proposes a novel approach, integrating the adaptive bee algorithm with a global pattern extractor to refine fingerprint matching processes. Specifically, the methodology focuses on adjusting the central point and angle of the studied impression. The effectiveness of the proposed methodology was evaluated using the standard FVC2004 database.
Results demonstrate the efficacy of the bee algorithm, a prominent artificial intelligence technique within the realm of swarm intelligence, in achieving a remarkable matching rate of 97.3%. This outcome underscores the algorithm's potency compared to alternative methods employed for similar purposes.

Author Biographies

Ebrahim Omar Al-Shami, Department of Automatic Control and Computers Engineering | Faculty of Mechanical and Electrical Engineering | Al Baath University | Syria

Department of Automatic Control and Computers Engineering | Faculty of Mechanical and Electrical Engineering | Al Baath University | Syria

Marah Bassem Ali, Department of Automatic Control and Computers Engineering | Faculty of Mechanical and Electrical Engineering | Al Baath University | Syria

Department of Automatic Control and Computers Engineering | Faculty of Mechanical and Electrical Engineering | Al Baath University | Syria

Downloads

Published

2024-03-30

How to Cite

1.
Adaptive of the bee algorithm with an overall pattern extractor to improve the fingerprint matching process. JESIT [Internet]. 2024 Mar. 30 [cited 2024 May 17];8(1):1-21. Available from: https://journals.ajsrp.com/index.php/jesit/article/view/7373

Issue

Section

Content

How to Cite

1.
Adaptive of the bee algorithm with an overall pattern extractor to improve the fingerprint matching process. JESIT [Internet]. 2024 Mar. 30 [cited 2024 May 17];8(1):1-21. Available from: https://journals.ajsrp.com/index.php/jesit/article/view/7373