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Effective traffic management plays a vital role in improving emergency response times and ensuring the efficient movement of vehicles on roadways. In this study, we propose an innovative approach to enhance traffic management through the implementation of a YOLOv5-based Ambulance Tracking System. The YOLOv5 algorithm, known for its high-speed and accurate object detection capabilities, is employed to track ambulances in real-time. By leveraging the power of computer vision and deep learning, our system provides precise and reliable tracking of ambulances, allowing traffic authorities to make informed decisions and take proactive measures to facilitate their smooth passage. The proposed system offers significant benefits such as reduced response times for emergency vehicles, minimized traffic congestion, and improved overall road safety. Through experimental evaluations, we demonstrate the effectiveness and efficiency of our YOLOv5-based Ambulance Tracking System in various traffic scenarios. The results highlight its potential to revolutionize traffic management and emergency services, ultimately saving valuable time and lives.
Patel et al. (Sun,) studied this question.
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