License plate recognition systems have a very important role in many applications such as toll management, parking control, and traffic management. In this paper, a framework of deep convolutional neural networks is proposed for Iranian license plate recognition. The first CNN is the YOLOv3 network that detects the Iranian license plate in the input image while the second CNN is a Faster R-CNN that recognizes and classifies the characters in the detected license plate. A dataset of Iranian license plates consisting of ill-conditioned images also developed in this paper. The YOLOv3 network achieved 99.6% mAP, 98.26% recall, 98.08% accuracy, and average detection speed is only 23ms. Also, the Faster R-CNN network trained and tested on the developed dataset and achieved 98.97% recall, 99.9% precision, and 98.8% accuracy. The proposed system can recognize the license plate in challenging situations like unwanted data on the license plate. Comparing this system with other Iranian license plate recognition systems shows that it is Faster, more accurate and also this system can work in an open environment.
翻译:牌照识别系统在许多应用中起着非常重要的作用,例如收费管理、停车控制和交通管理。在本文中,为伊朗的牌照识别提出了深演神经网络框架。第一个CNN是YOLOv3网络,在输入图像中检测伊朗的牌照,而第二个CNN是一个更快的R-CNN,在发现牌照中识别和分类的人物。由不完善图像组成的伊朗牌照数据集也在本文中开发。YOLOv3网络实现了99.6% mAP、98.26%回忆、98.08%准确度和平均检测速度只有23米。此外,快速R-CNN网络在开发数据集上培训和测试了98.97%的回顾率、99.9%的精确度和98.8%的准确度。拟议的系统可以识别具有挑战性的情况中的牌照,如牌照上不需要的数据。该系统与其他伊朗的牌照识别系统兼容,显示它更快、更准确,而且该系统可以在开放环境中运作。