Title |
A Social Distancing Framework Based on GPS and Bluetooth Empowered by Feature-based Machine Learning Algorithm |
Authors |
(Muhammad Adnan Khan) ; (Abdur Rehman) ; (Sagheer Abbas) ; (Muhammad Nadeem Ali) ; (Byung-Seo Kim) |
DOI |
https://doi.org/10.5573/IEIESPC.2025.14.1.118 |
Keywords |
Covid; DELM; Social distancing; Machine learning algorithm |
Abstract |
The current COVID-19 epidemic is responsible for causing a catastrophe on a global scale due to its risky spread. The community’s insecurity is growing as a result of a lack of appropriate remedial measures and immunization against the disease. In this case, social distancing is thought to be an effective barrier against the spread of the contagion virus as the risk of virus transmission can be reduced by avoiding direct contact with people. Thus, the goal of this research is to develop and improve an AI (Artificial Intelligence) system architecture for social distance monitoring. The framework could also use the GPS (Global Positioning System) to recognize human separation through cell phones. The transition learning framework is also applied to improve the consistency of the existing system. In this manner, the detection system uses a pre-trained technique that takes a Bluetooth dataset and location-sharing dataset to link to an additional level. In an attempt to approximate social distancing breaches among people, we used Bluetooth technology along with GPS distance estimation and set a threshold. To predict if the distance value exceeds the required social distance standard, a violation threshold is calculated and then it sends an alarm to every individual who is not maintaining social distancing. In response, the individual who breaks the social distance limit is also monitored using a detection approach. |