Fully Automatic License Plate Recognition (ALPR) has been a frequent research topic due to several practical applications. However, many of the current solutions are still not robust enough in real situations, commonly depending on many constraints. This paper presents a robust and efficient ALPR system based on the state-of-the-art YOLO object detector and Normalizing flows. The model uses two new strategies. Firstly, a two-stage network using YOLO and a normalization flow-based model for normalization to detect Licenses Plates (LP) and recognize the LP with numbers and Arabic characters. Secondly, Multi-scale image transformations are implemented to provide a solution to the problem of the YOLO cropped LP detection including significant background noise. Furthermore, extensive experiments are led on a new dataset with realistic scenarios, we introduce a larger public annotated dataset collected from Moroccan plates. We demonstrate that our proposed model can learn on a small number of samples free of single or multiple characters. The dataset will also be made publicly available to encourage further studies and research on plate detection and recognition.
翻译:由于若干实际应用,全自动驾驶板识别(ALPR)已成为一个频繁的研究课题,然而,许多目前的解决办法在现实情况下仍然不够健全,通常取决于许多限制因素。本文件展示了一种基于最先进的YOLO物体探测器和正常化流的强大而有效的ALPR系统。模型使用两种新的战略。首先,使用YOLO的两阶段网络和一个正常流模型,用于检测牌照(LP)和识别带有数字和阿拉伯字符的LP。第二,实施多尺度图像转换,为YOLO已作物LP探测(包括重大背景噪音)的问题提供解决办法。此外,在新数据集上进行了广泛的实验,以现实情景为基础,我们引入了从摩洛哥牌照中收集的附加说明数据集。我们证明,我们提议的模型可以学习少量无单个或多个字符的样品。还将公开提供数据集,以鼓励对板块检测和识别进行进一步的研究。