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An Algorithm for License Plate Recognition Applied to Intelligent Transportation System

机译:一种应用于智能交通系统的车牌识别算法

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摘要

An algorithm for license plate recognition (LPR) applied to the intelligent transportation system is proposed on the basis of a novel shadow removal technique and character recognition algorithms. This paper has two major contributions. One contribution is a new binary method, i.e., the shadow removal method, which is based on the improved Bernsen algorithm combined with the Gaussian filter. Our second contribution is a character recognition algorithm known as support vector machine (SVM) integration. In SVM integration, character features are extracted from the elastic mesh, and the entire address character string is taken as the object of study, as opposed to a single character. This paper also presents improved techniques for image tilt correction and image gray enhancement. Our algorithm is robust to the variance of illumination, view angle, position, size, and color of the license plates when working in a complex environment. The algorithm was tested with 9026 images, such as natural-scene vehicle images using different backgrounds and ambient illumination particularly for low-resolution images. The license plates were properly located and segmented as 97.16% and 98.34%, respectively. The optical character recognition system is the SVM integration with different character features, whose performance for numerals, Kana, and address recognition reached 99.5%, 98.6%, and 97.8%, respectively. Combining the preceding tests, the overall performance of success for the license plate achieves 93.54% when the system is used for LPR in various complex conditions.
机译:在一种新颖的阴影去除技术和字符识别算法的基础上,提出了一种应用于智能交通系统的车牌识别算法。本文有两个主要贡献。一种贡献是一种新的二进制方法,即阴影去除方法,该方法基于改进的Bernsen算法并结合了高斯滤波器。我们的第二个贡献是被称为支持向量机(SVM)集成的字符识别算法。在SVM集成中,从弹性网格中提取字符特征,并且将整个地址字符串作为研究对象,而不是单个字符。本文还提出了用于图像倾斜校正和图像灰度增强的改进技术。当在复杂环境中工作时,我们的算法对于照度,视角,位置,大小和颜色的变化具有鲁棒性。该算法已针对9026张图像进行了测试,例如使用不同背景和环境照明的自然场景车辆图像,尤其是低分辨率图像。车牌位置正确,分别为97.16%和98.34%。光学字符识别系统是具有不同字符特征的SVM集成,其数字,假名和地址识别的性能分别达到99.5%,98.6%和97.8%。结合之前的测试,当系统在各种复杂条件下用于LPR时,车牌成功的总体性能达到93.54%。

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