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面向数据脱敏的交通场景车牌检测方法

应申 曾卓源 张纪元

交通信息与安全2024,Vol.42Issue(6):84-94,11.
交通信息与安全2024,Vol.42Issue(6):84-94,11.DOI:10.3963/j.jssn.1674-4861.2024.06.009

面向数据脱敏的交通场景车牌检测方法

A Detection Method of Traffic Scene License Plate for Data Desensitization

应申 1曾卓源 1张纪元1

作者信息

  • 1. 武汉大学资源与环境科学学院 武汉 430079
  • 折叠

摘要

Abstract

Rapid and accurate detection of license plates in vehicle-based images is significant for protecting priva-cy information in smart transportation.However,the original YOLOv8 algorithm has limitations on the license plate detection in traffic scenes,such as weak feature extraction ability of small targets and misdetection of background information,etc.To fill these gaps,an improved traffic scene license plate detection method based on YOLOv8(TLP-YOLO)is proposed.The efficient multi-scale attention(EMA)module is adopted to enhance the ability of the backbone network to extract image characteristics.It makes the backbone network pay more attention to target re-gions of different scales and improves the recognition ability of the model to background information.A new feature pyramid network with skip connection and weighted fusion(SW-FPN)is designed.It enriches the features of small targets and avoid the information loss between different levels of the feature pyramid network,which improving the multi-scale feature fusion ability.In order to reduce the floating-point operations(FLOPs)and maintain the detec-tion accuracy,the partial convolution(PConv)and pointwise convolution(PWConv)modules are introduced to re-place the conventional convolution structure in detection head,which reduces redundant calculations and improves the utilization efficiency of spatial features.Based on Chinese city parking dataset(CCPD)and Chinese road plate dataset(CRPD),a dataset with multiple traffic scenes is constructed to verify the property of the model.Experimen-tal results show that:①The average precision(IOU changes from 0.5 to 0.95)of the proposed network is 83.6%,which is 2%higher than that of YOLOv8.The average precision(IOU is 0.7)of the proposed network is 97.7%,which is 0.8%higher than that of YOLOv8.②The FLOPs of TLP-YOLO model is 7.5 G,the number of parameters is 1.67 M,and the detection speed reaches 101 fps.In comparison to the original YOLOv8,the FLOPs and the num-ber of parameters is reduced by 8%and 45%,the detection speed is about the same.The improved algorithm can not only ensure the lightweight of the model,but also meet the requirements of vehicle equipment for the accuracy and deployment of license plate detection in traffic scenes.

关键词

数据脱敏/车牌检测/YOLOv8/交通场景/特征融合/高效多尺度注意力

Key words

data desensitization/license plate detection/YOLOv8/traffic scene/feature fusion/efficient multi-scale attention

分类

交通工程

引用本文复制引用

应申,曾卓源,张纪元..面向数据脱敏的交通场景车牌检测方法[J].交通信息与安全,2024,42(6):84-94,11.

基金项目

国家重点研发计划项目(2021YFB2501101)、湖北重大科技攻关项目(2023BAA017)资助 (2021YFB2501101)

交通信息与安全

OA北大核心CSTPCD

1674-4861

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