Smart City Gnosys

Smart city article details

Title Iot-Based Vehicle Class Detection For Smart Traffic Control
ID_Doc 34032
Authors Bhura A.; Sahoo P.; Kumar A.; Choudhary U.
Year 2024
Published Lecture Notes in Networks and Systems, 1117 LNNS
DOI http://dx.doi.org/10.1007/978-981-97-6992-6_13
Abstract Traffic control is one of the most challenging fields for smart city planning. Recent automatic traffic controllers are static, and in emergency conditions, they are shifted to manual mode for better management. The authors suggest an IoT and machine learning-based, dynamic in nature, traffic controller that can be an efficient solution for traffic flow management. The proposed algorithm determines the number of vehicles belonging to one of the three groups employed in this approach, light, medium, and heavy vehicles. The traffic light’s dynamic character can be enhanced by using the numbers derived from this method to calculate densities in real time. Making traffic lights dynamic can assist in alleviating the problem of traffic congestion and lead to smoother flow. © The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2024.
Author Keywords Dynamic traffic light; Smart city; Traffic density; Vehicle detection; YOLOv5


Similar Articles


Id Similarity Authors Title Published
19685 View0.914Manju T.; Sundar S.; Edwin Richard P.; Vishnu Vardhan R.; Pavithran M.Development Of Dynamic Traffic Control Based On Congestion Level Using Iot2025 International Conference on Computing and Communication Technologies, ICCCT 2025 (2025)
8520 View0.909Shamitha C.; Radhika S.; Malathy K.; Ranjith S.; Sasirekha N.An Intelligent Iot Enabled Traffic Queue Handling System Using Machine Learning AlgorithmProceedings of the 2022 International Conference on Innovative Computing, Intelligent Communication and Smart Electrical Systems, ICSES 2022 (2022)
7913 View0.903Dabran I.; Hunter B.An Efficient Traffic Control Management In The Smart City2019 IEEE International Conference on Microwaves, Antennas, Communications and Electronic Systems, COMCAS 2019 (2019)
21430 View0.903Jeyakumar L.; Raj K.; Stephen L.S.V.; Gurumoorthy K.; Thulasilingam L.; Manivannan S.A.Dynamic Traffic Management Using AiAIP Conference Proceedings, 3175, 1 (2025)
6361 View0.902Kunekar P.; Jadhavrao P.; Patil M.; Patil R.; Patil P.; Pokale V.Adaptive Traffic Signal Control System Using Machine LearningCognitive Science and Technology, 2025 (2025)
41151 View0.9Ouallane A.A.; Bahnasse A.; Bakali A.; Talea M.Overview Of Road Traffic Management Solutions Based On Iot And AiProcedia Computer Science, 198 (2021)
19433 View0.897Al-Jawahry H.M.Developing An Intelligent Traffic Management System For Smart Cities Through The Integration Of Machine Learning And Iot TechnologiesLecture Notes in Networks and Systems, 1306 LNNS (2025)
42891 View0.895Mirza N.M.; Ali A.; Shifa N.; Ishak M.K.; Ammar K.Predictive Modeling For Smart Traffic Systems: Harnessing Iot Data Insights2023 24th International Arab Conference on Information Technology, ACIT 2023 (2023)
30638 View0.894Sabeer S.; Ali S.S.; Siddiqua A.; Anjum A.Implementing Ml And Iot-Based Predictive Traffic-Management Systems For Smart Cities2024 2nd International Conference Computational and Characterization Techniques in Engineering and Sciences, IC3TES 2024 (2024)
8691 View0.893Rajan K.; Kumar T.G.; Kumar K.S.An Iot Based Traffic Control System Using Spatio-Temporal Shape Process For Density EstimationInternational Journal of Electrical and Electronics Research, 12, 2 (2024)