License plate recognition using machine learning

Md. Tawsifur Rahman, Ahmed Nur Merag, Ali Muhtasim, Md. Wahidur Rahman Araf, Md Humaion Kabir Mehedi, Annajiat Alim Rasel
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Abstract

Car owners altering license plates using different typefaces and designs violate the law that strictly forbids such behaviour. Traffic police officers claim that changing the license plates makes it impossible to read the registration numbers due to an increase in fatal street collisions and car thefts. They worry that it may be difficult to track down vehicles used in hit-and-run incidents. It is challenging to impose further limitations on any algorithm used to identify and recognise license plates in a developing nation like Bangladesh. This work has the primary objective of designing a reliable detection and recognition system for transitional, standard car license plates, which are frequently seen in developing countries. Increase the effectiveness of reading license plates drawn or printed in various styles and typefaces employing cuttingedge technology, including machine learning (ML) models. For this study, You Only Look Once (YOLOv3) is used to utilising the most recent version of the object detection method. The raw image is pre-processed to increase its quality and then divided into appropriate-sized grid cells to determine where the license plate should be placed. After that, the data is post-processed, and the accuracy of the proposed model is evaluted using industry-recognised standards. A sizeable image dataset was used to be tested using this proposed methodology. The presented system is expected to be essential for vehicle monitoring, parking fee collection, lowering traffic accidents, and identifying unregistered vehicles. The results demonstrate that the suggested method achieves 97.1% mAP, 95.3% precision and 96.8% in plate detection
使用机器学习识别车牌
车主用不同的字体和设计修改车牌违反了严格禁止这种行为的法律。交通警察声称,由于致命的街道碰撞和汽车盗窃事件的增加,更换车牌使车牌号码无法读取。他们担心可能很难追踪肇事逃逸的车辆。在孟加拉国这样的发展中国家,对任何用于识别和识别车牌的算法施加进一步的限制都是一项挑战。这项工作的主要目标是设计一个可靠的检测和识别系统,以识别在发展中国家经常看到的过渡标准汽车牌照。使用包括机器学习(ML)模型在内的尖端技术,提高读取以各种风格和字体绘制或打印的车牌的效率。在这项研究中,你只看一次(YOLOv3)被用来利用最新版本的目标检测方法。对原始图像进行预处理以提高其质量,然后将其划分为适当大小的网格单元,以确定应该放置车牌的位置。之后,对数据进行后处理,并使用行业公认的标准评估所提出模型的准确性。使用该方法测试了一个相当大的图像数据集。该系统将在车辆监控、停车收费、减少交通事故、识别未登记车辆等方面发挥重要作用。结果表明,该方法的mAP值为97.1%,精密度为95.3%,平板检测率为96.8%
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