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Modeling and Implementing Two-Stage AdaBoost for Real-Time Vehicle License Plate Detection

机译:实时车牌检测的两阶段AdaBoost建模和实现

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摘要

License plate (LP) detection is the most imperative part of the automatic LP recognition system. In previous years, different methods, techniques, and algorithms have been developed for LP detection (LPD) systems. This paper proposes to automatical detection of car LPs via image processing techniques based on classifier or machine learning algorithms. In this paper, we propose a real-time and robust method for LPD systems using the two-stage adaptive boosting (AdaBoost) algorithm combined with different image preprocessing techniques. Haar-like features are used to compute and select features from LP images. The AdaBoost algorithm is used to classify parts of an image within a search window by a trained strong classifier as either LP or non-LP. Adaptive thresholding is used for the image preprocessing method applied to those images that are of insufficient quality for LPD. This method is of a faster speed and higher accuracy than most of the existing methods used in LPD. Experimental results demonstrate that the average LPD rate is 98.38% and the computational time is approximately 49 ms.
机译:车牌(LP)检测是自动LP识别系统最重要的部分。在过去的几年中,已经为LP检测(LPD)系统开发了不同的方法,技术和算法。本文提出了基于分类器或机器学习算法的图像处理技术来自动检测汽车LP。在本文中,我们结合两阶段自适应增强(AdaBoost)算法和不同的图像预处理技术,为LPD系统提出了一种实时且鲁棒的方法。类似Haar的特征用于从LP图像计算和选择特征。 AdaBoost算法用于将经过训练的强分类器将搜索窗口内的图像部分分类为LP或非LP。自适应阈值用于图像预处理方法,该方法适用于LPD质量不足的那些图像。与LPD中使用的大多数现有方法相比,该方法具有更快的速度和更高的准确性。实验结果表明,平均LPD率为98.38%,计算时间约为49μms。

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