Deep automatic license plate recognition system

Vishal Jain, S. Zitha, A. Rajagopal, S. Biswas, H. S. Bharadwaj, K. Ramakrishnan
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引用次数: 57

Abstract

Automatic License Plate Recognition (ALPR) has important applications in traffic surveillance. It is a challenging problem especially in countries like in India where the license plates have varying sizes, number of lines, fonts etc. The difficulty is all the more accentuated in traffic videos as the cameras are placed high and most plates appear skewed. This work aims to address ALPR using Deep CNN methods for real-time traffic videos. We first extract license plate candidates from each frame using edge information and geometrical properties, ensuring high recall. These proposals are fed to a CNN classifier for License Plate detection obtaining high precision. We then use a CNN classifier trained for individual characters along with a spatial transformer network (STN) for character recognition. Our system is evaluated on several traffic videos with vehicles having different license plate formats in terms of tilt, distances, colors, illumination, character size, thickness etc. Results demonstrate robustness to such variations and impressive performance in both the localization and recognition. We also make available the dataset for further research on this topic.
深度自动车牌识别系统
车牌自动识别在交通监控中有着重要的应用。这是一个具有挑战性的问题,特别是在像印度这样的国家,车牌的大小、行数、字体等各不相同。在交通视频中,由于摄像头放置得很高,而且大多数车牌看起来都是倾斜的,所以难度就更大了。这项工作旨在使用深度CNN方法解决实时交通视频的ALPR问题。我们首先利用边缘信息和几何属性从每帧中提取候选车牌,以确保高召回率。将这些建议输入到CNN分类器中进行车牌检测,获得了较高的检测精度。然后,我们使用针对单个字符训练的CNN分类器以及用于字符识别的空间变压器网络(STN)。我们的系统在几个交通视频上进行了评估,这些视频中的车辆具有不同的车牌格式,包括倾斜、距离、颜色、照明、字符大小、厚度等。结果显示了对这些变化的鲁棒性和令人印象深刻的定位和识别性能。我们还提供数据集以供进一步研究此主题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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