基于点加权和模板匹配的车牌自动检测系统

Hossein Vahid Dastjerdi, Vahid Rostami, Farid Kheiri
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引用次数: 8

摘要

车牌识别是加强交通法规和车辆追踪的重要安全措施之一。有效的车牌识别必须处理环境噪声、车牌损坏、光线变化、天气条件和汽车运动等问题。本文对车牌的一些属性进行了提取,在不同的条件下,这些属性更加稳定。提出了一种准确、灵活的车牌识别方法;运用形态学方法,提出了一种新的加权点方法。在这个过程中,我们面临两个阶段:1)定位车牌,2)读取车牌上的字符。我们在这两个部分中使用了新的模式识别技术和方法。结果表明,与目前业界使用的其他技术相比,该模型能够更快地识别出固定距离范围内的车牌。该方法除具有93%的准确率外,还能在强噪声环境下工作。当我们无法通过图像分割方法定位到车牌的准确位置时,车牌读取器算法还可以从车牌图像中提取、处理和识别字符。为了评估我们的算法,我们将其应用于一个由120张不同背景、亮度、距离和视角的车辆图像组成的数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic license plate detection system based on the point weighting and template matching
License plate recognition is one of the important security measurements, reinforcing the transportation laws and car-tracing. An effective license plate recognition must deal with problems such as environmental noise, damages to the license plate, light changes, weather conditions and car movements. In this paper, some attributes of the license plates have been extracted, in different conditions in which they are more stable. We proposed an accurate and flexible license plate recognition; applying morphological methods, and a novel method for weighting points. In this process, we face two stages: 1) locating the license plate, 2) reading its characters. We used novel pattern recognition techniques and methods in both sections. The results show that the proposed model is capable of faster recognizing the license plate in the fixed distance range in comparison with other techniques being used currently in the industry. Beside the 93% accuracy rate of this method, it has the ability to work in environments with strong noise. The license plate reader algorithm can also extract, process, and identify the characters from the image of the license plate when we cannot locate the exact location of the license plate through the image segmentation method.to evaluate our algorithm, we applied it to a database comprised of 120 vehicle images with different backgrounds, brightness, distances and viewing angles.
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