Secure Face and Liveness Detection with Criminal Identification for Security Systems

Main Article Content

Pratibha Shinde
Ajay Raundale

Abstract

The advancement of computer vision, machine learning, and image processing techniques has opened new avenues for enhancing security systems. In this research work focuses on developing a robust and secure framework for face and liveness detection with criminal identification, specifically designed for security systems. Machine learning algorithms and image processing techniques are employed for accurate face detection and liveness verification. Advanced facial recognition methods are utilized for criminal identification. The framework incorporates ML technology to ensure data integrity and identification techniques for security system. Experimental evaluations demonstrate the system's effectiveness in detecting faces, verifying liveness, and identifying potential criminals. The proposed framework has the potential to enhance security systems, providing reliable and secure face and liveness detection for improved safety and security.


The accuracy of the algorithm is 94.30 percent. The accuracy of the model is satisfactory even after the results are acquired by combining our rules inwritten by humans with conventional machine learning classification algorithms. Still, there is scope for improving and accurately classifying the attack precisely.

Article Details

How to Cite
Shinde, P. ., & Raundale, A. . (2023). Secure Face and Liveness Detection with Criminal Identification for Security Systems. International Journal on Recent and Innovation Trends in Computing and Communication, 11(8s), 497–506. https://doi.org/10.17762/ijritcc.v11i8s.7231
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Articles

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