使用深度学习的自动车牌检测

G. N, G. C, V. B, Agathiyan S, Abi Nandha P, A. S, A. S
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引用次数: 2

摘要

车牌自动检测是一种成熟的解读车牌中字母的方法。在过去的5-10年里,活跃车辆的数量达到了巨大的增长,这种增长也导致了非法活动的增加。由于车辆的迅速增加,很难跟踪车辆。对所有车辆进行跟踪是至关重要的。在本文中,我们使用名为Tensor flow的开源平台技术进行机器学习。首先,第一步是给汽车的形象。一般来说,给定的汽车图像是低分辨率的,并且在边缘数据中存在讽刺缺陷。因此,我们需要处理现有的图像,这需要很高的精度。其次,将该技术应用于汽车图像的检索,在提取的图像中通过裁剪和灰度转换的方式表明其身份。最终输出从而转换为灰度,使图像的噪声水平降低,并且还检测到不同颜色的印版数。这样计算机就不需要用不同的算法来处理不同的颜色。利用光学字符识别技术将处理后的图像中的车牌字母提取为文本。提取的文本保存在Excel文档中,可用于将来的目的。辅助较前沿板确认方式时,正常变化为3.6%。最后,我们提出了一个交叉命令链分类框架,在一定程度上依赖于向量技术和贝叶斯规则三方法。
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Automatic Number Plate Detection using Deep Learning
Automatic Number Plate Detection is an established method to interpret the letters in the number plates. In the last 5-10 years, the number of active vehicles has reached a tremendous growth, the growth has also resulted in increase of the illegal activities. It is hard to keep track of a vehicle due to rapid increase of the vehicles. It is crucially important to keep track of all vehicles by the belonging authorities. In this paper, we use technology open source platform called Tensor flow for machine learning. Primarily, the first step is to give the image of the car. Generally, the given image of the car is in low resolution and has satirical deficit in edge data. So, we need to process pictures which are present, it requires the high level precision. Secondly, this technology henceforth used to retrieve the pictures of the automobile, board which indicate it’s identify in the extracted picture also in a way cropped and converted into grayscale. Final output thus converted into grayscale so that the noise level of the image is reduced and the number plates of different colors also detected. So that the computer doesn’t need different algorithms for different colors. The letters of number plate in the image which is processed is extracted to text using optical character recognition. The extracted text is saved in Excel document, which can be used for future purposes. Assist more when compared with the cutting edge plate acknowledgment approach, the normal change is 3.6%. At long last, we propose a crossover chain of command classification framework relying somewhat using vector technique and the Bayesian rule-three methodology.
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