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基于级联端对端深度架构的交通标志识别方法 被引量:4

A method of Traffic Sign Recognition Based on Cascade and End-to-end Depth Architecture
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摘要 交通标志的正确识别是智能车辆规范行驶、道路交通安全的前提;为解决智能车采集目标图像模糊、分辨率低,造成识别精度低且时效性差的问题,构建一种基于级联深度网络的交通标志识别模型,该模型级联超分辨率处理网络ESPCN与目标检测识别网络RFCN,ESPCN网络提高输入采集图像的分辨率,为低分辨率图像实现超分辨率处理,RFCN网络提取图像全局特征,实现交通标志的检测与分类识别;平衡采样及多尺度的训练策略结合数据增强的预处理方法,增强了网络模型的鲁棒性及扩展性;经实验验证,算法模型针对常见交通标志识别率达到98.16%,召回率达到96.2%,且鲁棒性较好。 The correct identification of traffic signs is a prerequisite for smart vehicles to regulate driving and road traffic safety.In order to solve the problem that the target image of the smart car is blurred and the resolution is low,resulting in low recognition accuracy and poor timeliness,a traffic sign recognition model based on cascading depth network is constructed.The model cascades the super-resolution processing network ESPCN and target detection.Identifying the network RFCN,the ESPCN network improves the resolution of the input captured image,achieves super-resolution processing for low-resolution images,and extracts global features of the image from the RFCN network to realize the detection and classification of traffic signs.Balanced sampling and multiscale training strategies combined with data-enhanced pre-processing methods enhance the robustness and scalability of the network model.The experimental results show that the recognition rate of common traffic signs is 98.16%,the recall rate is 96.2%,and the robustness is good.
作者 樊星 沈超 徐江 连心雨 刘占文 Fan Xing;Shen Chao;Xu Jiang;Lian Xinyu;Liu Zhanwen(School of Information Engineering,Chang’an University,Xi’an 710064,China)
出处 《计算机测量与控制》 2019年第4期143-148,共6页 Computer Measurement &Control
基金 国家自然科学基金项目(61703054) 陕西省重点研发计划重点项目(2018ZDXM-GY-044) 装备预研教育部联合基金(6141A02022322) 高等学校学科创新引智计划项目(B14043) 中央高校基本科研业务费高新技术研究培育项目(300102248202)
关键词 深度学习 交通标志识别 ESPCN网络 RFCN网络 平衡采样 数据增强 deep learning traffic sign recognition ESPCN network RFCN network balance samples data enhance
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