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License Plate Detection System using Machine Learning

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dc.contributor.author Rafi, Nafiz Ar
dc.contributor.author Iasmin, Shohana
dc.contributor.author Md. Toha, Ashik-E-Rabbi-
dc.contributor.author Moon, Alimuzzaman
dc.contributor.author Hossen, Maruf
dc.date.accessioned 2023-12-27T03:24:19Z
dc.date.available 2023-12-27T03:24:19Z
dc.date.issued 2023-11
dc.identifier.uri http://103.15.140.189/handle/123456789/271
dc.description Internship Report en_US
dc.description.abstract License plate detection plays a crucial role in contemporary surveillance and transportation systems, with applications ranging from law enforcement to parking management and access control. This research report presents an in-depth exploration of a cutting-edge license plate detection system that leverages YOLOv8, EasyOCR, OpenCV, and Python to ensure robust and efficient performance. The evolution of technology in computer vision has enabled the development of sophisticated license plate detection systems, which can greatly enhance security and streamline various operations. This report delves into the fundamental concepts, technical intricacies, and practical implications of the system, aiming to provide valuable insights into its development and real-world applications. The problem analysis highlights the challenges of traditional methods, such as accuracy and adaptability, which our research seeks to overcome. By employing YOLOv8, EasyOCR, and OpenCV, we aim to create a comprehensive solution that sets a new standard in license plate detection. Our research objectives include system development, ensuring robustness under varying conditions, real-world applicability, performance evaluation, and the documentation of best practices. These objectives collectively contribute to our mission of providing a practical and scalable solution that can be adapted to various scenarios and industries. The motivation behind this research is driven by the potential for improved security, optimized traffic management, enhanced user experiences, and operational efficiency. We aim to harness the power of advanced computer vision and recognition technologies effectively. The background chapter provides a historical perspective, challenges faced, and the state of the art technologies, such as YOLOv8, EasyOCR, and OpenCV, which underpin our research. In the requirement analysis, we define criteria such as real-time processing, accuracy, adaptability, robustness, scalability, ethical considerations, documentation, and user-friendliness to guide our model's development. The system design section serves as the blueprint for our license plate detection system, highlighting the interaction and collaboration of YOLOv8, EasyOCR, and Open CV. Finally, the results section showcases our system's outstanding accuracy of 99.01%, demonstrating its effectiveness in real-world applications. en_US
dc.language.iso en_US en_US
dc.subject CSE en_US
dc.subject License en_US
dc.subject License Plate en_US
dc.subject License Plate Detection en_US
dc.subject System en_US
dc.title License Plate Detection System using Machine Learning en_US
dc.type Technical Report en_US


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