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Research on License Plate Image Segmentation and Intelligent Character Recognition

机译:牌照图像分割与智能字符识别研究

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摘要

With the accumulation of people's wealth and the improvement of purchasing power, more and more people are buying cars as a means of travel. Walking and cycling of the past have now become a car trip. License plate recognition technology is especially important in intelligent transportation systems. It has been widely used in large shopping malls or supermarket parking lots, highway toll stations, speeding violation supervision and other fields. However, the accuracy and efficiency of license plate image recognition are insufficient. To solve the above problems, we propose a license plate character recognition method based on local HOG and layered LBP feature fusion from the perspectives of image pre-processing, license location, characters' segmentation and recognition. First, pre-processing the license image area by highlighting the license plate image; then, the license plate is positioned based on wavelet decomposition and brightness moment; next the tilted license plate image is corrected, the license plate frame is adjusted, and characterization is performed by using the improved projection method based on the fact that the projection of the character is a single peak or a double peak. Finally, the local HOG and hierarchical LBP feature fusion methods are used to identify the license characters. The results show that the license plate's character recognition rate of the proposed method reaches 99.71%, and the time taken is small. This not only improves the character recognition rate, but also saves recognition time. The results show that the method has important practical significance in license plates' recognition.
机译:随着人们的财富和购买力的改善,越来越多的人将汽车作为旅行手段购买。过去的骑行和骑自行车现在已经成为一辆汽车旅行。牌照识别技术在智能交通系统中尤为重要。它已广泛应用于大型购物中心或超市停车场,公路收费站,超速违规监督等领域。然而,车牌图像识别的准确性和效率不足。为了解决上述问题,我们提出了一种基于本地HOG和分层LBP特征融合的牌照字符识别方法,从图像预处理,许可位置,字符的分割和识别的角度来看。首先,通过突出牌照图像来预处理许可证图像区域;然后,牌照基于小波分解和亮度时刻定位;接下来,校正倾斜的牌照图像,调整牌照框架,并且通过使用改进的投影方法来执行表征,这是基于该字符的投影是单峰或双峰的事实。最后,使用本地生猪和分层LBP功能融合方法来标识许可证字符。结果表明,所提出的方法的牌照的字符识别率达到99.71%,所以所花费的时间很小。这不仅提高了字符识别率,还可以节省识别时间。结果表明,该方法在牌照的识别方面具有重要的实际意义。

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