基于YOLOV6和BLPNET的孟加拉车辆铭牌检测与识别

Camelia Sinthia, M. H. Kabir
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引用次数: 1

摘要

有效的车牌识别算法在降低管理费用的同时,提高交通管理效率。本文提出的新方法基于YOLOv6放大卷积模型,由铭牌识别和定位两部分组成。从而提高了模型的接受野和特征表达能力。对于车牌定位,CIOU损失考虑的是中心距离、纵横比,而不仅仅是包围框的覆盖面积。研究表明,YOLOv6模型的车牌定位准确率为94.7%,分别比Faster-RCNN、MobileNet及相应准确率分别提高5.6%、5.1%和4.3%。我们提出了一种BLPNET(VGG-19-RESNET-50)模型来识别车牌的特征,并获得了100%的F1分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Recognition of Bangladeshi Vehicles' Nameplates Using YOLOV6 and BLPNET
An effective license plate identification algorithm reduces administration expenses while simultaneously enhancing traffic management effectiveness. The novel method suggested in this paper is based on the YOLOv6 amplified convolution model and has two components: Nameplate recognition and location. As a result, the model's receptive field and feature expression capability are improved. For license plate location, CIOU loss takes into account the center distance, aspect ratio, and not just the coverage area of the bounding box. According to the studies, the YOLOv6 model has a 94.7% precision rate for locating license plates, which is 5.6%, 5.1%, and 4.3% better than Faster-RCNN, MobileNet, and the corresponding accuracy rates. We proposed a BLPNET(VGG-19-RESNET-50) model to recognize the characters of number plates and achieved a 100% F1 score.
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