In this paper, we present an efficient and layout-independent Automatic License Plate Recognition (ALPR) system based on the state-of-the-art YOLO object detector that contains a unified approach for license plate (LP) detection and layout classification to improve the recognition results using post-processing rules. The system is conceived by evaluating and optimizing different models with various modifications, aiming at achieving the best speed/accuracy trade-off at each stage. The networks are trained using images from several datasets, with the addition of various data augmentation techniques, so that they are robust under different conditions. The proposed system achieved an average end-to-end recognition rate of 96.8% across eight public datasets (from five different regions) used in the experiments, outperforming both previous works and commercial systems in the ChineseLP, OpenALPR-EU, SSIG-SegPlate and UFPR-ALPR datasets. In the other datasets, the proposed approach achieved competitive results to those attained by the baselines. Our system also achieved impressive frames per second (FPS) rates on a high-end GPU, being able to perform in real time even when there are four vehicles in the scene. An additional contribution is that we manually labeled 38,334 bounding boxes on 6,237 images from public datasets and made the annotations publicly available to the research community.
翻译:在本文中,我们展示了一个基于最先进的YOLO天体探测器的高效和独立布局自动许可板识别(ALPR)系统,该系统包含使用后处理规则对牌照(LP)探测和布局分类的统一方法,用后处理规则改进识别结果;该系统的构想是通过对不同模型进行评价和优化,并进行各种修改,以便在每个阶段实现最佳速度/准确性权衡;网络使用若干数据集的图像进行培训,并增加各种数据增强技术,以便在不同条件下保持稳健;拟议系统在试验中使用的8个公共数据集(来自五个不同区域)达到平均端到端识别率96.8%,超过中国LP、OpenALPR-EU、SSIG-SegPlate和UFPR-ALPR数据集的以往工作和商业系统;在其他数据集中,拟议方法在基线所达到的图像上取得了竞争性结果;我们的系统在高端 GPUPU(PS)上每秒达到令人印象深刻的框框框框,在高级GPUPU(来自五个区域)中)达到96-37的平均端识别率率,能够将公共标记在公共标记上进行更多的标记。