Multilingual and skew license plate detection based on extremal regions

Rongqiang Qian, Bailing Zhang, Frans Coenen, Yong Yue
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Abstract

License Plate Detection (LPD) is an important component of many applications involving security and traffic surveillance. Despite current progress, lots of hurdles remain in the way of a robust LPD system. This is particularly true for the detection of license plates with different layouts and skew angles. In this paper, a novel LPD system is proposed for detecting English and Chinese license plates with large skew angles. The proposed system consists of three main stages: 1) a character proposal module to find candidate characters based on Extremal Regions (ERs); 2) feature extraction and classification relies on Convolutional Neural Network (CNN); 3) license plate detection by region linking. The new method much improves on the robustness of existing approaches by leaving out character segmentation. The performance of the proposed license plate localization algorithm is verified using different datasets of vehicle images, including a large field-captured dataset, a skew and tilt dataset, a 12 countries dataset and two benchmark datasets. For Chinese civilian vehicles, the accuracy of plate localization is over 98.3%.
基于极值区域的多语种倾斜车牌检测
车牌检测(LPD)是许多涉及安全和交通监控应用的重要组成部分。尽管目前取得了进展,但在建立健全的LPD系统的道路上仍存在许多障碍。对于不同布局和倾斜角度的车牌的检测尤其如此。本文提出了一种新的LPD系统,用于检测大斜角的中英文车牌。该系统包括三个主要阶段:1)基于极值区域(extreme region, ERs)的候选字符推荐模块;2)特征提取与分类依赖于卷积神经网络(CNN);3)区域链接车牌检测。新方法省去了字符分割,大大提高了现有方法的鲁棒性。使用不同的车辆图像数据集,包括大型现场捕获数据集,倾斜和倾斜数据集,12个国家数据集和两个基准数据集,验证了所提出的车牌定位算法的性能。对于中国民用汽车,车牌定位精度在98.3%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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