基于视频的单镜头检测器和递归神经网络车牌识别

D. A. Navastara, Nuzha Musyafira, C. Fatichah, Safhira Maharani
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引用次数: 0

摘要

每辆车都有自己的身份,换句话说,就是车牌号。此身份通常用于停车处理、安全开发和收费系统。有必要开发一种可以被车牌使用和支持的自动化系统,即车牌识别(LPR)。本文提出了基于视频数据CCTV的车牌识别系统,采用单镜头检测器定位车牌,连通分量标记进行字符分割,递归神经网络识别车牌上的字符。实验结果表明,本文方法的车牌定位平均准确率为94.01%,字符分割平均准确率为84.08%,字符识别平均准确率为93.53%。
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Video-Based License Plate Recognition Using Single Shot Detector and Recurrent Neural Network
Each vehicle has its own identity, in other words, the vehicle number plate. This identity often uses in parking processing, security development, and toll systems. It is necessary to develop an automated system that can be used and supported by vehicle number plates known as License Plate Recognition (LPR). This paper proposed the LPR system based on video data CCTV using the Single Shot Detector to localize the license plate, the Connected Component Labeling to do the character segmentation, and Recurrent Neural Network to recognize the characters on the license plate. This study shows our proposed method works well based on the experimental result, with an average accuracy of 94.01 % for license plate localization, 84.08% for character segmentation, and 93.53% for character recognition.
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