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Traffic Flow Statistics Method Based on Deep Learning and Multi-Feature Fusion 被引量:1
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作者 Liang Mu Hong Zhao +3 位作者 Yan Li Xiaotong Liu Junzheng Qiu Chuanlong Sun 《Computer Modeling in Engineering & Sciences》 SCIE EI 2021年第11期465-483,共19页
Traffic flow statistics have become a particularly important part of intelligent transportation.To solve the problems of low real-time robustness and accuracy in traffic flow statistics.In the DeepSort tracking algori... Traffic flow statistics have become a particularly important part of intelligent transportation.To solve the problems of low real-time robustness and accuracy in traffic flow statistics.In the DeepSort tracking algorithm,the Kalman filter(KF),which is only suitable for linear problems,is replaced by the extended Kalman filter(EKF),which can effectively solve nonlinear problems and integrate the Histogram of Oriented Gradient(HOG)of the target.The multi-target tracking framework was constructed with YOLO V5 target detection algorithm.An efficient and longrunning Traffic Flow Statistical framework(TFSF)is established based on the tracking framework.Virtual lines are set up to record the movement direction of vehicles to more accurate and detailed statistics of traffic flow.In order to verify the robustness and accuracy of the traffic flow statistical framework,the traffic flow in different scenes of actual road conditions was collected for verification.The experimental validation shows that the accuracy of the traffic statistics framework reaches more than 93%,and the running speed under the detection data set in this paper is 32.7FPS,which can meet the real-time requirements and has a particular significance for the development of intelligent transportation. 展开更多
关键词 Deep learning multi-target tracking kalman filter histogram of oriented gradient traffic flow statistics
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Modeling and Characterizing Internet Backbone Traffic 被引量:2
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作者 Yang Jie He Yang +1 位作者 Lin Ping Cheng Gang 《China Communications》 SCIE CSCD 2010年第5期49-56,共8页
With enormous growth of the number of Internet users and appearance of new applications, characterization of Internet traffic has attracted more and more attention and has become one of the major challenging issues in... With enormous growth of the number of Internet users and appearance of new applications, characterization of Internet traffic has attracted more and more attention and has become one of the major challenging issues in telecommunication network over the past few years. In this paper, we study the network traffic pattern of the aggregate traffic and of specific application traffic, especially the popular applications such as P2P, VoIP that contribute most network traffic. Our study verified that majority Internet backbone traffic is contributed by a small portion of users and a power function can be used to approximate the contribution of each user to the overall traffic. We show that P2P applications are the dominant traffic contributor in current Internet Backbone of China. In addition, we selectively present the traffic pattern of different applications in detail. 展开更多
关键词 traffic characterization MEASUREMENT traffic pattern BEHAVIOR flow statistical characteristics
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