基于图像处理和卷积神经网络的阿富汗车牌检测与识别

Javid Hamdard, Worarat Krathu
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引用次数: 0

摘要

尽管已经进行了大量关于车辆车牌自动检测和识别的研究,但目前提出的各种自动车牌识别系统都是为车牌遵循标准模式的特定国家设计的。但是,由于设计和语言不同,这些系统不能在阿富汗应用。此外,由于普什图语的草书性质、书写方向和形状变化,将单词分割成孤立的字符是一项更复杂的任务。因此,普什图语的光学字符识别是一个欠发达的领域。到目前为止,还没有对阿富汗车牌检测和识别进行研究。阿富汗车牌上的详细信息包括字符、数字和每个省的名称。本文研究了一种从车辆图像中检测车牌,然后识别车牌上的省份名称、字符和数字的方法。特别是,新方法结合了四个核心步骤。第一步是车牌检测,采用基于自定义阈值的精细边缘检测,并涉及多种图像处理技术提取车牌。第二阶段是利用基于随机变换的技术进行车牌调整。第三阶段是车牌分割,使用扫描方法隔离车牌上的每个字符、数字和省份名称。最后一步使用卷积神经网络对车牌的字母数字字符和省份名称进行分类。此外,还创建了两个数据集:字母数字字符数据集包含14类2800张图像,省名数据集包含34类6800张图像。所提出的模型对省份名称的分类准确率为99.93%,对字母数字字符的分类准确率为98.93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Afghanistan Vehicle Number Plate Detection and Recognition Using Image Processing and Convolutional Neural Networks
Although numerous research studies have been conducted concerning automatic vehicle number plate detection and recognition, various presented automated number plate recognition systems are devised for specific countries where number plates follow standard patterns. However, such systems cannot be applied in Afghanistan because of the different designs and the language. Moreover, due to the cursive nature, writing direction, and shape variation of the Pashto characters, the segmentation of words into isolated characters is a more complicated task. Hence, the Pashto optical character recognition is a less developed area. To date, no research study has been conducted for Afghanistan number plate detection and recognition. The details on the Afghanistan number plate include character, numbers, and each province's name. The paper presents the study of its type attempting to detect the number plate from the vehicle image and then recognize the province's name, characters, and numbers on the number plate. In particular, the new method incorporating four core steps. The first step is number plate detection applying canny edge detection based on user-defined thresholding and extracts the number plate involving several image processing techniques. The second phase is number plate adjustment using Randon transform-based techniques. The third stage is number plate segmentation isolating each character, number, and province name on the number plate using a scanning approach. The final step employs a convolutional neural network to classify the number plate's alphanumeric characters and provinces' names. In addition, two datasets have been created: the dataset for alphanumeric characters contains 2800 images of 14 classes, and the dataset for provinces' names contains 6800 images of 34 classes. The proposed models present 99.93 percent accuracy for provinces' names classification and 98.93 percent for alphanumeric characters' classification.
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