🕔 Call For Paper — Vol. 13 | Issue 6 | June 2026 | Deadline: 30-Jun-2026
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📢 Call for Papers — Volume 13, Issue 6 (June 2026) | Submission Deadline: June 30, 2026 | Rapid peer review: 2–3 days | Impact Factor: 7.37 (SJIF 2026)

Paper Details

📄 IJAERD-2026-0040

Machine Learning and AI Approaches for Smart Traffic Control: A Reveiw

Author(s):Shradha Prajapati, Dhruvi Trivedi Pandya, Ankita Patel
Institution:Gandhinagar University
Published In:Vol. 13, Issue 4 — April 2026
Page No.:60-65
Domain:Computer Engineering / Information Technology
Type:Review Paper
ISSN (Online):2348-4470
ISSN (Print):2348-6406
Abstract

Manual traffic surveillance can be a daunting task as Traffic Management Centers operate a myriad of cameras installed over a network. Injecting some level of automation could help lighten the workload of human operators performing manual surveillance and facilitate making proactive decisions which would reduce the impact of incidents and recurring congestion on roadways. This article presents a novel approach to automatically monitor real time traffic footage using deep convolutional neural networks and a stand-alone graphical user interface. The authors describe the results of research received in the process of developing models that serve as an integrated framework for an artificial intelligence enabled traffic monitoring system. The proposed system deploys several state-of-the-art deep learning algorithms to automate different traffic monitoring needs. Taking advantage of a large database of annotated video surveillance data, deep learning-based models are trained to detect queues, track stationary vehicles, and tabulate vehicle counts. A pixel-level segmentation approach is applied to detect traffic queues and predict severity. Real-time object detection algorithms coupled with different tracking systems are deployed to automatically detect stranded vehicles as well as perform vehicular counts. At each stages of development, interesting experimental results are presented to demonstrate the effectiveness of the proposed system. Overall, the results demonstrate that the proposed framework performs satisfactorily under varied conditions without being immensely impacted by environmental hazards such as blurry camera views, low illumination, rain, or snow.

Keywords
Artificial Intelligence (AI); Machine Learning (ML); Traffic Flow Optimization;
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🕮 How to Cite

Shradha Prajapati, Dhruvi Trivedi Pandya, Ankita Patel, “Machine Learning and AI Approaches for Smart Traffic Control: A Reveiw”, International Journal of Advance Engineering and Research Development (IJAERD), Vol. 13, Issue 4, pp. 60-65, April 2026.

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Vol. 13 | Issue 6
June 2026