Number Plate Detection using Deep Learning and Automatic Gate Control

Authors

  • Jyoti M Kharade Associate Professor, Department of Electrical Engineering, Annasaheb Dange College of Engineering & Technology, Ashta, Maharashtra, India
  • Abhilash Ajay Mulik B.Tech Student, Department of Electrical Engineering, Annasaheb Dange College of Engineering & Technology, Ashta, Maharashtra, India
  • Vaishnavi Bhagvan Sasane B.Tech Student, Department of Electrical Engineering, Annasaheb Dange College of Engineering & Technology, Ashta, Maharashtra, India
  • Sanika Kashinath Bandagar B.Tech Student, Department of Electrical Engineering, Annasaheb Dange College of Engineering & Technology, Ashta, Maharashtra, India
  • Hemant Shashikant Yadav B.Tech Student, Department of Electrical Engineering, Annasaheb Dange College of Engineering & Technology, Ashta, Maharashtra, India

DOI:

https://doi.org/10.5281/zenodo.15386181

Keywords:

ANPR (Automatic Number Plate Recognition), Optical Character Recognition, Deep Learning

Abstract

In the realm of increasing security and automation, this research paper presents a novel approach to automatic gate control using number plate detection with OpenCV. The system leverages an Arduino microcontroller paired with a camera to identify and verify vehicle license plates at entrance gates, streamlining access control processes without human intervention. Building on methodologies and findings from existing literature, such as the use of PIC microcontrollers and MATLAB in previous systems, our approach integrates modern image processing techniques to enhance accuracy and reliability.

Our system is designed to improve convenience and security at various premises requiring restricted access, including industrial facilities, academic institutions, and residential complexes. The camera captures vehicle images, which are then processed using OpenCV to extract and recognize the license plate numbers. Verified numbers trigger the Arduino to control a servo motor and buzzer, ensuring that only authorized vehicles gain entry.

This study demonstrates the efficacy of combining hardware and software solutions to create an automatic gate control system that not only reduces the need for human oversight but also increases the speed and accuracy of vehicle entry management. The implementation highlights a significant reduction in processing time, aligning with contemporary needs for efficient and secure vehicle identification mechanisms in a world of growing vehicular traffic and security concerns.

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References

Akila, K., Sabitha, B., Jayamurugan, R., Teveshvar, M., & Vignesh, N. (2019). Automated license plate recognition system, using computer vision. International Journal of Engineering and Advanced Technology (IJEAT), 8(6), 1878- 1881.

Anci, M., Bhuvaneswari, M., Haritha, N., Krishnaveni, V., & Punithavathisivathanu, B. (2019). Design of automatic number plate recognition system for moving vehicle. International Journal of communication and computer Technologies, 7(1), 001-005.

Anisha, G., & Rekha, B. (2016). Automated car number plate detection system to detect far number plates. IOSR Journal of Computer Engineering (IOSR-JCE), 18(4), 34-40.

Anuja1, P., Anusha, R., Dharshini, M., Muruga, D., & Radha, D. (2017). Electronic toll collection using automatic number plate recognition. International Journal of Latest Trends in Engineering and Technology, 001-005.

Published

2025-04-26
CITATION
DOI: 10.5281/zenodo.15386181
Published: 2025-04-26

How to Cite

Kharade, J. M., Mulik, A. A., Sasane, V. B., Bandagar, S. K., & Yadav, H. S. (2025). Number Plate Detection using Deep Learning and Automatic Gate Control. International Journal of Engineering and Management Research, 15(2), 137–146. https://doi.org/10.5281/zenodo.15386181

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