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Deep Learning System for Automatic License Plate Detection and Recognition

机译:用于自动车牌检测和识别的深度学习系统

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The detection and recognition of a vehicle License Plate (LP) is a key technique in most of the applications related to vehicle movement. Moreover, it is a quite popular and active research topic in the field of image processing. Different methods, techniques and algorithms have been developed to detect and recognize LPs. Nevertheless, due to the LP characteristics that vary from one country to another in terms of numbering system, colors, language of characters, fonts and size. Further investigations are still needed in this field in order to make the detection and recognition process very efficient. Although this domain has been covered by a lot of researchers, various existing systems operate under well-defined and controlled conditions. For example, some frameworks require complicated hardware to make good quality images or capture images from vehicles with very slow speed. For this reason the detection and recognition of LPs in different conditions and under several climatic variations remains always difficult to realize with good results. For that, we present in this paper an automatic system for LP detection and recognition based on deep learning approach, which is divided into three parts: detection, segmentation, and character recognition. To detect an LP, many pretreatment steps should be made before applying the first Convolution Neural Network (CNN) model for the classification of plates / non-plates. Subsequently, we apply a few pre-processing steps to segment the LP and finally to recognize all the characters in upper case format (A-Z) and digits (0-9), using a second CNN model with 37 classes. The performance of the suggested system is tested on two datasets which contain images under various conditions, such as poor picture quality, image perspective distortion, bright day, night and complex environment. A great percentage of the results show the accuracy of the suggested system.
机译:在大多数与车辆移动有关的应用中,检测和识别车辆牌照(LP)是一项关键技术。而且,它是图像处理领域中非常流行和活跃的研究主题。已经开发出不同的方法,技术和算法来检测和识别LP。但是,由于LP的特性在编号系统,颜色,字符语言,字体和大小方面因国家而异。为了使检测和识别过程非常有效,该领域仍需要进一步研究。尽管许多研究人员已经涵盖了该领域,但是各种现有系统都在定义明确且受控的条件下运行。例如,某些框架需要复杂的硬件来制作高质量的图像或以非常慢的速度捕获来自车辆的图像。因此,始终很难实现在不同条件下以及几种气候变化下对LP的检测和识别。为此,我们在本文中提出了一种基于深度学习方法的LP检测和识别自动系统,该系统分为三个部分:检测,分割和字符识别。为了检测LP,在应用第一个卷积神经网络(CNN)模型对板块/非板块进行分类之前,应采取许多预处理步骤。随后,我们使用具有37个类别的第二个CNN模型,应用一些预处理步骤来分割LP,并最终识别大写格式(A-Z)和数字(0-9)的所有字符。所建议系统的性能在包含不同条件下图像的两个数据集上进行了测试,例如不良的图像质量,图像透视失真,白天,黑夜和复杂的环境。很大一部分结果表明了所建议系统的准确性。

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