A novel approach for fast and robust multiple license plate detection

Mahdi Yazdian Dehkordi, M. Nikzad, Vahid Reza Ekhlas, Z. Azimifar
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引用次数: 3

Abstract

License Plate Detection (LPD) is the most difficult, critical and time consuming task in license plate recognition (LPR) systems. In this paper, a novel texture-based method is proposed for fast and robust LPD. First, a new filter called Peak-Valley filter is applied on the lines of the image. This filter not only extracts the remarkable gray level changes as consecutive peaks and valleys, but also simultaneously removes the undesirable small variations. Secondly, a sequential Peak-Valley partitioning is utilized to segment the transitions into some groups. Afterward, a neural network is employed to find true candidate lines and finally the candidate lines are aggregated to form the plates regions. According to our experiments, the proposed method correctly detects all plates presented in the image regardless of their styles and without considering the whole image. Experimental results showed that this approach can apply on real-time application for outdoor complex scenes.
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一种快速鲁棒的多车牌检测方法
车牌检测是车牌识别系统中最困难、最关键、最耗时的任务。本文提出了一种基于纹理的快速鲁棒LPD方法。首先,在图像的线条上应用一个新的滤波器,称为峰谷滤波器。该滤波器不仅可以提取出显著的灰度变化作为连续的峰谷,而且可以同时去除不需要的小变化。其次,利用连续峰谷划分法将过渡区划分为若干组。然后,利用神经网络寻找真实的候选线,最后将候选线聚合形成板块区域。实验结果表明,该方法可以在不考虑图像整体的情况下,正确地检测图像中呈现的所有板块,而不考虑它们的风格。实验结果表明,该方法可用于室外复杂场景的实时应用。
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