Optimizing Facial Recognition Systems for Large Populations: Insights from Public Target Detection Methods

Authors

  • Safaa Hakeem Obaid Alkhafaji
  • Yaghoub Farjami NA
  • Rouhollah Dianat

DOI:

https://doi.org/10.22399/ijcesen.2552

Keywords:

Facial Recognition, Large Populations, Public Target Detection, Accuracy, Efficiency

Abstract

Inspired by findings in the public target detection regime, this study proposes to improve facial recognition system performance in large population by drawing insight and blending practical methods. The research goals consist of developing and testing optimized procedures to increase accuracy and productivity. We assessed the performance metrics of facial recognition systems using mixed methods through experimental setups, simulations and user studies. When the public target detection methods are applied, significant improvements in recognition accuracy and the system efficiency are observed. The implications of this research are related to technological practices and public safety in terms of being able to create a more efficient and reliable facial recognition technology for public environments. However, because this study brings together some of the theoretical advancements in facial recognition technology with its practical applications while also ensuring that this technology is both effective and ethical, this work contributes uniquely to the field of facial recognition technology and public safety.

References

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Published

2025-06-03

How to Cite

Alkhafaji, S. H. O., Yaghoub Farjami, & Rouhollah Dianat. (2025). Optimizing Facial Recognition Systems for Large Populations: Insights from Public Target Detection Methods. International Journal of Computational and Experimental Science and Engineering, 11(3). https://doi.org/10.22399/ijcesen.2552

Issue

Section

Research Article