Development of Pandemic Contact Tracing System using Convolutional Neural Network
DOI:
https://doi.org/10.67378/sj/180Keywords:
CNN, Pandemic, Contact Tracing, Deep Learning.Abstract
The study presents a pioneering approach to pandemic management by harnessing Convolutional Neural Networks (CNN) to revolutionize contact tracing systems. The primary focus is on enhancing accuracy, efficiency, and adaptability within pandemic scenarios. The study's novelty lies in the strategic selection of CNN, a powerful deep learning methodology renowned for its intricate pattern recognition capabilities. This innovative choice transcends traditional techniques, introducing a flexible and adaptable system tailored for identifying potential contacts and exposures during pandemics. The study encompasses the complete lifecycle of the contact tracing system, from development and implementation to real-world evaluation. The system's successful implementation underscores its practicality and readiness for testing and deployment. The utilization of CNN provides a unique edge, as its inherent spatial feature recognition aptitude amplifies accuracy, significantly improving the system's precision. Through real-world validation, this study establishes the system's efficacy, substantiating the benefits of its adoption in pandemic response. In essence, this study paves the way for an advanced contact tracing paradigm, showcasing the potential of deep learning methodologies to elevate the accuracy, efficiency, and global impact of pandemic management strategies.
Downloads
Published
How to Cite
Issue
Section
Categories
License
Copyright (c) 2026 Christopher Okoro Uzoigwe, Collins Ifeanyi Osuji, Aminu Muhammad Adamu, Nachamada Vachaku Balamah, Enenche Ngbede Michael

This work is licensed under a Creative Commons Attribution 4.0 International License.