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Smart city article details

Title Employing Yolo Model For Traffic Monitoring On Roadways
ID_Doc 22891
Authors Borse R.; Bhattacharyya A.; Sarkar A.; Bhattacharjee S.
Year 2024
Published 2024 International Conference on Intelligent Computing and Sustainable Innovations in Technology, IC-SIT 2024
DOI http://dx.doi.org/10.1109/IC-SIT63503.2024.10862128
Abstract With the advent of advanced computer vision techniques and the support of Deep learning models, it has become very feasible to do traffic analysis. This study explores the creation of analytical and computer vision algorithms for traffic analysis which can precisely detect, track, count and analyze traffic situations. An efficient traffic analysis would ensure safety and proper urban planning. This paper proposes a deep learning based intelligent system which would perform automatic vehicle detection, tracking and counting of three different types of vehicles namely, car, bus and truck. One of the prominent deep learning models - YOLO was selected and employed for this purpose. Competitive analysis of different YOLO models is performed for various parameters, where YOLOv8 emerges out to be the winner, which gives an accuracy more than of $\mathbf{9 7 \%}$ at a decent processing time. © 2024 IEEE.
Author Keywords Smart City; Traffic analysis; Traffic Monitoring; Vehicle Tracking and Counting; YOLO


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