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基于联合投票网络的交通场景天气分类方法 被引量:2

Weather Classification in Traffic Scene Based on Joint Voting Network
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摘要 基于交通视频监控图像的天气识别已经成为智能交通系统中重要的研究课题.虽然卷积神经网络(convolutional neural network,CNN)在图像识别技术获得了巨大的发展,但是针对复杂交通场景的天气识别问题,现有的模型在特征表达方面仍然面临着巨大的挑战.为了提取丰富的语义特征,提出了基于联合投票机制的深度神经网络(deep neural network,DNN)模型.所提出的模型包括两个核心模块:基于通道和空间注意力机制的二阶特征模块和基于复合特征结果联合投票机制的分类模块,用以提取不同天气图像中的判别性信息,提高在复杂交通场景下的天气识别性能.最后,在两个基准天气分类数据集上进行了验证试验,结果表明:对于复杂场景条件下的天气识别问题,所提出的基于联合投票机制的深度神经网络模型的识别正确率优于目前最好的天气识别方法的1.97%. Weather classification based on road monitoring images has become an important research topic in intelligent traffic system.With the application of convolutional neural network(CNN),image recognition has been greatly developed.However,the existing deep learning methods still face great challenges in weather recognition of complex traffic scenarios.A novel deep neural network(DNN)model based on joint voting framework is proposed to extract rich semantic features.The proposed model consists of two core modules:the second-order feature module based on channel and spatial attention mechanism and the joint voting classification module based on composite features,which can extract discriminant information from different weather images and improve the weather recognition performance in complex scenarios.Extensive experiments conducted on two benchmark weather classification datasets demonstrate that the proposed joint voting DNN outperforms the existing weather recognition method by 1.97%.
作者 崔洪涛 曹科 张虎 崔潇 CUI Hongtao;CAO Ke;ZHANG Hu;CUI Xiao(Henan Expressway Network Monitoring Toll Communication Service Co.,Ltd.,Zhengzhou 450016,China;College of Information Science and Technology,Southwest Jiaotong University,Chengdu 611756,China)
出处 《西南交通大学学报》 EI CSCD 北大核心 2021年第3期579-586,共8页 Journal of Southwest Jiaotong University
基金 河南省交通运输厅科技计划(2019J-2-2)。
关键词 智能交通 天气识别 卷积神经网络 联合投票 天气分类 深度神经网络 intelligent transportation weather recognition convolutional neural network(CNN) joint voting weather classification deep neural network(DNN)
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