Smart City Gnosys

Smart city article details

Title Detection Of Traffic Congestion From Surveillance Videos Using Machine Learning Techniques
ID_Doc 19290
Authors Govinda Rao S.; Rambabu R.; Anil Kumar B.S.; Srinivas V.; Varaprasada Rao P.
Year 2022
Published 6th International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud), I-SMAC 2022 - Proceedings
DOI http://dx.doi.org/10.1109/I-SMAC55078.2022.9987342
Abstract Smart Cities applications, automated traffic control and management is the most trending research area. With the improving needs of developed towns and cities traffic congestion, now a days this the traffic congestion control and its applications has large needed facing problem in the increased population cities. Peeled eye camera photos and videos can be watched efficiently to detect traffic congestions in most of the areas in the grown populated cities. The earlier researchers had observed more on traffic signal controls through photos executed by using different algorithms of machine learning. There is existing research available on traffic signal controls through image processing and various machine learning methods. The image features are extracted and interpreted for the same. Deep learning algorithm, convolutional neural network (CNN) is proposed for effective detection of traffic congestion. There were existing works available in traffic detection using machine learning and deep learning approaches. Machine learning, Nowadays, traffic surveillance systems collect a lot of videos or images and store them for the live monitoring purposes. Deep learning techniques are used sparingly in traffic surveillance and control systems. Various images with various weather conditions are collected and are used as training dataset. Advantages of deep learning have been exploited in many applications, which use computer vision and image analysis. One of such applications is traffic monitoring, in which large amounts of video or images are processed for effective learning. The traffic surveillance can only monitor, which cannot detect the traffic on particular time. © 2022 IEEE.
Author Keywords and multi-class classification; Convolution Neural Networks (CNN) Traffic prediction; deep learning; Machine learning


Similar Articles


Id Similarity Authors Title Published
32606 View0.914Kumar A.; Ranjan R.Intelligent Traffic Identification System Powered Byconvolutional Neural NetworksACM International Conference Proceeding Series (2023)
49704 View0.913Omar T.; Bovard D.; Tran H.Smart Cities Traffic Congestion Monitoring And Control SystemACMSE 2020 - Proceedings of the 2020 ACM Southeast Conference (2020)
58556 View0.903Mane D.; Bidwe R.; Zope B.; Ranjan N.Traffic Density Classification For Multiclass Vehicles Using Customized Convolutional Neural Network For Smart CityLecture Notes in Networks and Systems, 461 (2022)
1395 View0.903Tripathi A.N.; Sharma B.A Deep Review: Techniques, Findings And Limitations Of Traffic Flow Prediction Using Machine LearningLecture Notes in Mechanical Engineering (2023)
11265 View0.902Sudhakaran P.; Koushik C.R.; George J.G.Automated Traffic Control For Sustainable Urban Mobility3rd International Conference on Automation, Computing and Renewable Systems, ICACRS 2024 - Proceedings (2024)
6361 View0.9Kunekar P.; Jadhavrao P.; Patil M.; Patil R.; Patil P.; Pokale V.Adaptive Traffic Signal Control System Using Machine LearningCognitive Science and Technology, 2025 (2025)
36028 View0.899Roslan R.; Ng S.; Yee L.C.Machine Learning Techniques For Sustainable Smart Cities Traffic ManagementJournal of Advanced Research in Applied Sciences and Engineering Technology, 33, 1 (2023)
1098 View0.897Mathiane M.; Tu C.; Adewale P.; Nawej M.A Convolution Neural Network Based Vanet Traffic Control System In A Smart CityLecture Notes in Networks and Systems, 825 (2024)
5791 View0.896Ramana K.; Srivastava G.; Kumar M.R.; Gadekallu T.R.; Lin J.C.-W.; Alazab M.; Iwendi C.A Vision Transformer Approach For Traffic Congestion Prediction In Urban AreasIEEE Transactions on Intelligent Transportation Systems, 24, 4 (2023)
17980 View0.896Bharaty K.S.; Konduri P.S.R.Deep Learning-Driven Smart Signal Systems For Advanced Image And Video Processing In Urban InfrastructureProceedings - 4th International Conference on Smart Technologies, Communication and Robotics 2025, STCR 2025 (2025)