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Cascaded deep learning-based efficient approach for license plate detection and recognition

机译:基于深度学习的牌照牌照检测和识别的高效方法

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Automatic license plate (ALP) detection and recognition is an important task for both traffic surveillance and parking management systems, as well as being crucial to maintaining the flow of modern civic life. Various ALP detection and recognition methods have been proposed to date. These methods generally use various image processing and machine learning techniques. In this paper, a cascaded deep learning approach is proposed in order to construct an efficient ALP detection and recognition system for the vehicles of northern Iraq. The license plates in northern Iraq contain three regions, namely a plate number, a city region, and a country region. The proposed method initially employs several preprocessing techniques such as Gaussian filtering and adaptive image contrast enhancement to make the input images more suited to further processing. Then, a deep semantic segmentation network is used in order to determine the three license plate regions of the input image. Segmentation is then carried out via deep encoder-decoder network architecture. The determined license plate regions are fed into two separate convolutional neural network (CNN) models for both Arabic number recognition and the city determination. For Arabic number recognition, an end-to-end CNN model was constructed and trained, whilst for the city recognition, a pretrained CNN model was further fine-tuned. A new license plate dataset was also constructed and used in the experimental works of the study. The performance of the proposed method was evaluated both in terms of detection and recognition. For detection, recall, precision and F-measure scores were used, and for recognition, classification accuracy was used. The obtained results showed the proposed method to be efficient in both license plate detection and recognition. The calculated recall, precision and F-measure scores were 92.10%, 94.43%, and 91.01%, respectively. Moreover, the classification accuracies for Arabic numbers and city labels were shown to be 99.37% and 92.26%, respectively. (C) 2020 Elsevier Ltd. All rights reserved.
机译:自动牌照(ALP)检测和识别是交通监测和停车管理系统的重要任务,以及维持现代公民生活的流动至关重要。迄今为止已经提出了各种ALP检测和识别方法。这些方法通常使用各种图像处理和机器学习技术。本文提出了一种级联的深度学习方法,以构建伊拉克北部车辆的高效ALP检测和识别系统。伊拉克北部的牌照包含三个地区,即板号,城市地区和一个乡村地区。该方法最初采用几种预处理技术,例如高斯滤波和自适应图像对比度增强,以使输入图像更适合进一步处理。然后,使用深度语义分割网络来确定输入图像的三个牌照区域。然后通过深度编码器解码器网络架构进行分割。确定的牌照区被送入两个单独的卷积神经网络(CNN)模型,用于阿拉伯数字识别和城市确定。对于阿拉伯数字识别,构建和培训了端到端的CNN模型,同时为城市识别,预先训练的CNN模型进一步进行微调。还构建了新的车牌数据集并用于研究的实验工作。在检测和识别方面评估所提出的方法的性能。对于检测,使用召回,使用精度和F测量分数,并且用于识别,使用分类精度。所得结果表明,在牌照检测和识别中,所提出的方法是有效的。计算的召回,精确和F措施分别分别为92.10%,94.43%和91.01%。此外,阿拉伯数字和城市标签的分类准确性分别显示为99.37%和92.26%。 (c)2020 elestvier有限公司保留所有权利。

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