Transfer Learning-based Real-time Handgun Detection
Abstract
Traditional surveillance systems rely on human attention, limiting their effectiveness. This study employs convolutional neural networks and transfer learning to develop a real-time computer vision system for automatic handgun detection. Comprehensive analysis of online handgun detection methods is conducted, emphasizing reducing false positives and learning time. Transfer learning is demonstrated as an effective approach. Despite technical challenges, the proposed system achieves a precision rate of 84.74%, demonstrating promising performance comparable to related works, enabling faster learning and accurate automatic handgun detection for enhanced security. This research advances security measures by reducing human monitoring dependence, showcasing the potential of transfer learning-based approaches for efficient and reliable handgun detection.
Cite
@article{arxiv.2311.13559,
title = {Transfer Learning-based Real-time Handgun Detection},
author = {Youssef Elmir},
journal= {arXiv preprint arXiv:2311.13559},
year = {2025}
}
Comments
16 pages, 9 figures, and 3 tables. published at The Iraqi Journal of Science, issued by College of Science at University of Baghdad