Detection and Recognition of Vehicle Components Using Image Processing and Deep Learning Techniques

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Author listMahasak Ketcham, Thittaporn Ganokratanaa, Patiyuth Pramkeaw, Phumraphi Boonthai, Narumol Chumuang

Publication year2023

Start page276

End page284

Number of pages9

URLhttps://ieeexplore.ieee.org/abstract/document/10355988/authors#authors

LanguagesEnglish-United States (EN-US)


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Abstract

This research study presents an algorithmic approach for the detection and identification of key components on license plates, including numerical digits, province codes, vehicle colors, and vehicle makes and types. The methodology integrates image processing techniques and deep learning methodologies to achieve comprehensive image analysis. The algorithm incorporates image preprocessing techniques to optimize the input images, followed by a deep neural network trained on a large annotated dataset. The algorithm utilizes image segmentation and character recognition techniques to detect and classify numerical digits on license plates. Similarly, it employs segmentation and classification processes for identifying province codes, vehicle colors, makes, and types. Extensive training ensures the algorithm's accuracy and robustness under varying conditions. The proposed algorithm demonstrates the potential for accurate license plate component detection and identification, with applications in law enforcement and traffic monitoring systems.


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Last updated on 2024-29-01 at 23:05