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Title Yolov9 Driven Internet Of Things Enabled Sustainable Solution For Intelligent Traffic Light Management System For Emergency Vehicles In Large Scale Urban Traffic
ID_Doc 62130
Authors Vijay Ganesh P.; Sam Joshua V.; Saro Murugan L.; Mahalakshmi S.
Year 2025
Published 2nd International Conference on Machine Learning and Autonomous Systems, ICMLAS 2025 - Proceedings
DOI http://dx.doi.org/10.1109/ICMLAS64557.2025.10968719
Abstract Due to densely populated urban environment leads to huge traffic in peak hours, Intelligent traffic light management system becomes paramount for emergency vehicle transportation on leveraging the sensor technologies. However sensor data acquired from densely populated urban environment helps to process the traffic congestion based traffic density. Many researches has been carried out to enable intelligent transportation system using internet of things, artificial intelligence and communication technologies but still it requires sustainable solutions for intelligent transportation., traffic congestion management, traffic light controlling with respect to the detection of emergency vehicles like ambulance as it saves the life of the human being. In this paper, AI driven Intelligent of Things enabled sustainable solutions for intelligent traffic light management system for emergency vehicles in the large scale urban traffic. Initially sensor or camera deployed in the smart cities monitors the roads and its surroundings environments. Those acquired information is transmitted to the base station containing IoT servers. In IoT Server., video data is transformed into image frames and processed using YoloV9 based AI model. YoloV9 Model uses multiple component like backbone., neck and head for processing the image frame to recognize and tack the objects in each frame. Especially Backbone model employs convolution neural network for multi scale feature extraction and feature map generation on inclusion of the Generalized Efficient aggregation Network while neck component uses the path aggregation network for future fusion process and head component uses anchor box bounding box prediction method to detect and recognize the object of interest. On detect of the object of interest, distance and speed of the object is computed using gradient flow. Further model incorporates prediction approaches to detected emergency vehicle to estimate its speed and distance from traffic signal as it helps to control traffic light in signal automatically. Furthermore proposed model eliminates the unwanted traffic congestion caused of ambulance vehicle through prioritizing normal traffic in the urban areas. Experimental analysis of the proposed architecture is carried out as IoT prototype to control the traffic signal for emergency vehicles with Yolo V9based AI model using python programming and OpenCV library files. Performance analysis of the proposed model is carried out with respect to object detection accuracy., throughput and latency. Proposed model provides excellent results compared to state of art approaches. © 2025 IEEE.
Author Keywords Artificial intelligence; Emergency Vehicles; Intelligent Transportation System; Internet of Things; Sustainable Solution; Traffic Light Control System; YOLOv9 Architecture


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