ISSN No:2250-3676 ----- Crossref DOI Prefix: 10.64771 ----- Impact Factor: 9.625
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(Peer Reviewed, Referred & Indexed Journal)


    Embedded Deep Vision–Driven Adaptive Traffic Signal Control System Using Real-Time Vehicle Density Recognition

    Dr.MM.Raghavendra, B Mani Gayathri, Chagaleti Pavani, Chavva Divya, Jilakara Neela

    Author

    ID: 2323

    DOI: Https://doi.org/10.5281/zenodo.19356123

    Abstract :

    Urban Traffic Congestion Continues To Intensify Due To Rapid Population Growth, Increased Vehicle Ownership, And Inefficient Fixed-time Signal Systems. Conventional Traffic Lights Operate On Predetermined Cycles That Fail To Adapt To Real-time Traffic Variations, Resulting In Longer Waiting Times, Fuel Wastage, And Increased Environmental Pollution. This Research Proposes An Embedded Deep Vision Module For Dynamic Traffic Signal Control Based On Real-time Density Recognition. The System Employs Deep Learning–based Object Detection Models Integrated With Embedded Hardware To Identify Vehicle Count, Classify Traffic Density Levels, And Adjust Signal Timing Automatically. The Module Processes Live Video Feeds From Traffic Cameras And Uses Convolutional Neural Networks (CNNs) To Detect And Quantify Vehicles Accurately Under Varying Lighting And Weather Conditions. The Processed Data Is Transmitted To A Microcontroller-controlled Signal Unit, Enabling Optimized Signal Intervals That Reduce Congestion And Improve Traffic Flow Efficiency. The Proposed System Offers Scalability, Low Latency, And Cost-effectiveness Suitable For Smart City Deployments. By Leveraging Deep Vision And Embedded Intelligence, The Approach Enhances Urban Mobility, Reduces Emissions, And Provides A Robust Infrastructure For Future Intelligent Transportation Systems. Keywords: Embedded Systems, Deep Vision, Traffic Signal Control, Vehicle Density Recognition, Convolutional Neural Networks (CNN), Real-Time Traffic Monitoring, Intelligent Transportation Systems, Smart Traffic Management, Computer Vision, Smart Cities, Adaptive Traffic Signals, Urban Traffic Congestion.

    Published:

    31-3-2026

    Issue:

    Vol. 26 No. 3 (2026)


    Page Nos:

    1157-1164


    Section:

    Articles

    License:

    This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.

    How to Cite

    Dr.MM.Raghavendra, B Mani Gayathri, Chagaleti Pavani, Chavva Divya, Jilakara Neela , Embedded Deep Vision–Driven Adaptive Traffic Signal Control System Using Real-Time Vehicle Density Recognition , 2026, International Journal of Engineering Sciences and Advanced Technology, 26(3), Page 1157-1164, ISSN No: 2250-3676.

    DOI: https://doi.org/10.5281/zenodo.19356123