An efficient method to improve the accuracy of Vietnamese vehicle license plate recognition in unconstrained environment

Khanh Nguyen Quoc, Dan Pham Van, Van Pham Thi Bich
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Abstract

Background: Most previous studies in automatic license plate recognition (ALPR) focused on recognizing license plate (LP) in constrained environment where cameras are installed in front of LPs and other conditions such as lighting, weather, and image quality are satisfied. Besides, recent studies on ALPR in Vietnam have conducted in small datasets and have not covered various cases of Vietnamese LPs.Aim: To develop a model for ALPR that is effective in unconstrained environment in Vietnam.Method: We propose two improvements: We apply the idea of the key-point detection problem for LP detection part, and use a segmentation free approach based on encoder decoder network for the LP optical character recognition (OCR) part. We train and evaluate models in a large dataset collected from unconstrained environment.Results: Our results show improvements in LP detection accuracy with mean IOU mIOU = 95.01% and precision P75 = 99, 5%. The accuracy in LP OCR was up to Accseq = 99.28% at sequence level and Accchar = 99.7% at character level.Conclusion: We provide a large dataset of Vietnamese LP images that can be effectively used to evaluate ALPR systems in Vietnam, and proposes improvement techniques to tackle problems of ALPR in unconstrained environment in Vietnam.
一种提高无约束环境下越南车牌识别精度的有效方法
背景:以往的自动车牌识别(ALPR)研究大多集中在车牌前方安装摄像头、满足光照、天气、图像质量等条件的受限环境下车牌识别。此外,最近关于越南ALPR的研究都是在小数据集上进行的,并没有涵盖越南lp的各种病例。目的:开发一种在越南无约束环境下有效的ALPR模型。方法:我们提出了两个改进方案:在LP检测部分采用关键点检测问题的思想,在LP光学字符识别(OCR)部分采用基于编码器-解码器网络的无分割方法。我们在一个从无约束环境中收集的大型数据集中训练和评估模型。结果:LP检测准确率提高,平均IOU mIOU = 95.01%,精密度P75 = 99.5%。LP OCR在序列水平上的准确率为Accseq = 99.28%,在字符水平上的准确率为Accchar = 99.7%。结论:我们提供了越南LP图像的大型数据集,可以有效地用于评估越南的ALPR系统,并提出了改进技术,以解决越南无约束环境下的ALPR问题。
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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