An Intelligent License Plate Detection and Recognition Model Using Deep Neural Networks

J. A. Onesimu, Robin D Sebastian, Y. Sei, Lenny Christopher
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引用次数: 1

Abstract

One of the largest automotive sectors in the world is India. The number of vehicles traveling by road has increased in recent times. In malls or other crowded places, many vehicles enter and exit the parking area. Due to the increase in vehicles, it is difficult to manually note down the license plate number of all the vehicles passing in and out of the parking area. Hence, it is necessary to develop an Automatic License Plate Detection and Recognition (ALPDR) model that recognize the license plate number of vehicles automatically. To automate this process, we propose a three-step process that will detect the license plate, segment the characters and recognize the characters present in it. Detection is done by converting the input image to a bi-level image. Using region props the characters are segmented from the detected license plate. A two-layer CNN model is developed to recognize the segmented characters. The proposed model automatically updates the details of the car entering and exiting the parking area to the database. The proposed ALPDR model has been tested in several conditions such as blurred images, different distances from the cameras, day and night conditions on the stationary vehicles. Experimental result shows that the proposed system achieves 91.1%, 96.7%, and 98.8% accuracy on license plate detection, segmentation, and recognition respectively which is superior to state-of-the-art literature models.
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基于深度神经网络的智能车牌检测与识别模型
印度是世界上最大的汽车行业之一。近年来,通过公路行驶的车辆数量有所增加。在商场或其他拥挤的地方,许多车辆进出停车区。由于车辆数量的增加,很难手动记下所有进出停车场的车辆的车牌号。因此,有必要开发一种自动识别车辆牌照号码的车牌自动检测和识别(ALPDR)模型。为了实现这一过程的自动化,我们提出了一个三步流程,该流程将检测车牌、分割字符并识别其中的字符。检测是通过将输入图像转换为双层图像来完成的。使用区域道具,从检测到的车牌中分割出字符。开发了一个两层CNN模型来识别分割的字符。所提出的模型自动将汽车进出停车场的详细信息更新到数据库中。所提出的ALPDR模型已在多种条件下进行了测试,如图像模糊、与摄像机的不同距离、静止车辆的昼夜条件。实验结果表明,该系统在车牌检测、分割和识别方面的准确率分别为91.1%、96.7%和98.8%,优于现有的文献模型。
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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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