Real-time number plate detection using AI and ML
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Published:2024-01-01
Issue:
Volume:2
Page:37
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ISSN:3008-9093
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Container-title:Gamification and Augmented Reality
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language:
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Short-container-title:Gamification and Augmented Reality
Author:
Swathi Patakamudi,Sai Tejaswi Dara,Amanulla Khan Mohammad,Saishree Miriyala,Babu Rachapudi Venu,Kumar Anguraj Dinesh
Abstract
The abstract presents a research study focusing on real-time license plate verification, a key feature of electronic systems that operate by rapidly identifying and removing identification numbers from vehicle registration in a dynamic global environment. The research leverages the combination of artificial intelligence (AI) and machine learning (ML) techniques, specifically the integration of region-based convolutional neural networks (RCNN) and advanced RCNN algorithms, to create a powerful and readily available system. In terms of methods, this research optimizes algorithm performance and deploys the system in a cloud-based environment to improve accessibility and scalability. Through careful design and optimization, the proposed system has achieved a consistent result in license recognition, as evident from the well-accounted evaluation of performance, including precision, recall, and computational efficiency. The results demonstrate the efficiency and usability of this system in a real installation and promise to revolutionize automatic vehicle identification. Finally, the integration of artificial intelligence and machine learning technology into real-time license plate recognition signifies changes in traffic management, assessment safety and smart city plans. Therefore, interdisciplinary collaboration and continuous innovation are crucial to shaping a sustainable and balanced future for intelligent transportation systems.
Publisher
Salud, Ciencia y Tecnologia
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