期刊文献+

基于支持向量机的城市道路交通状态模式识别研究 被引量:22

Urban Road Traffic Condition Pattern Recognition Based on Support Vector Machine
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摘要 城市道路交通状态识别是现代智能交通系统的重要组成部分,是交通智能控制、诱导和协同系统的基础.基于支持向量机建立车流量、平均速度和占有率的三维反映空间,以堵塞流、拥挤流、平稳流和顺畅流为标签对道路交通状态进行分类;并在MATLAB平台下利用LiBSVM工具包进行实验分析,对SVM各种核函数的分类效果进行比较研究,实现了支持向量机技术的交通状态模式识别.结果表明:选择的指标能很好地反映交通状态的特征,SVM核函数可以以较高的分类精度区分开交通流的状态识别,数据的归一化对分类的结果具有重要的影响. As an important part of the modern intelligent transportation system, urban transport condition recognition is the base of intelligent control, guidance and synergy system. This paper establishes a three- dimensional space with traffic volume, average speed and occupation ratio. It then classifies transportation condition patterns in terms of blocking flow, crowded flow, steady flow and unhindered flow based on wide literature review. Furthermore, this paper presents the algorithm with the MATALB LiBSVM toolbox. To process the data, this paper compares the classification result of different SVM kernel functions and thus realizes the transport condition pattern recognition via the support vector machine ( SVM). The results reveal that the selected indexes effectively reflect the characteristics of the traffic conditions. The SVM kernelfunction can separate different patterns from traffic flows with high classification accuracy, and the data normalization has a significant influence on the result of classification.
出处 《交通运输系统工程与信息》 EI CSCD 北大核心 2013年第1期130-136,共7页 Journal of Transportation Systems Engineering and Information Technology
基金 美国能源基金会资助项目(G-1208-16658)
关键词 城市道路交通 交通状态 模式识别 支持向量机 LIBSVM urban road traffic traffic state pattern recognition support vector machine(SVM) LiBSVM
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参考文献16

  • 1皮晓亮,杨晓光,孙亚.基于环形线圈检测器采集信息的交通状态分类方法应用研究[J].华东公路,2006(1):33-38. 被引量:23
  • 2Adel W Sadek , Michael J Demetsky , Brain L Smith. Case-based reasoning for real time traffic flow management [ J ]. Computer-Aided Civil and Infrastructure Engineering, 1999,14:347-356.
  • 3Francesco Palmieri, Ugo Fiore. A nonlinear recurrence- based approach to traffic classification [ J ]. Computer Networks ,2009,53 (6) :761-773.
  • 4Ang61ica Lozano, Giuseppe Manfredi, Luciano Nieddu. An algorithm for the recognition of levels of congestion in road traffic problems [ J ]. Matherematics and computers in simulation,2009,76 (6) : 1926-1934.
  • 5M. Montazeri-Gh, A Fotouhi. Traffic condition recognition using the k-means clustering method [ J . Transportation Research B: Mechanical Engineering, 2011,18 (4) :930-937.
  • 6Mohamed Abdel-Aty, Anurag Pande. Identifying crash propensity using specific traffic speed conditions [ J ]. Journal of Safety Research, 2005,36( 1 ) :91-108.
  • 7Andrzej Ruta, Yongmin Li, Xiaohui Liu. Real-time traffic sign recognition from video by class-specific discriminative features [ J ]. Pattern Recognition,2010,43( 1 ) :416-430.
  • 8美国交通研究委员会.道路通行能力手册[M].人民交通出版社,2007.
  • 9李清泉,高德荃,杨必胜.基于模糊支持向量机的城市道路交通状态分类[J].吉林大学学报(工学版),2009,39(S2):131-134. 被引量:26
  • 10李志恒,孙东,靳雪翔,于迪,张佐.基于模式的城市交通状态分类与性质研究[J].交通运输系统工程与信息,2008,8(5):83-87. 被引量:8

二级参考文献20

  • 1Jiuyi Hua, Ardeshir Faghri. Dynamic Traffic Pattern Classification Using Artificial Neural Networks [R] .Transportation research Record 1399:14-19.
  • 2Adel W Sadek, Michael J Demetsky, Brain L Smith. Case-Basd Reasoning for Real-Time Traffic Flow Wanagement [J] .Computer-Aided Civil and Infrastructure Engineering, 1999, 14: 347-356.
  • 3Attor Sanju Nair,Jyh-Charn Liu,Laurence Rilett,Saurabh Gupta.Non-Linear Analysis of Traffic Flow.2001 IEEE Intelligent Transportation Systerns Conference Proceedings, 2001: 683- 687.
  • 4Hojjat Adeli, Asim Karim.Fuzzy-Wavelet RBFNN Model for Freeway Incident Detection [J] .Journal of Transportation Engineering, 2000:464-471.
  • 5Karlene A Kosanovich, Michael J Piovoso.PCA of Wavelet Transformed Process Data for Monitoring[J] .Intelligent Data Analysis, 1997 (1) :85-99.
  • 6Vladimir N Vapnik.Statistical Learning Theory [M] .New Yolk: Wiley, 1988.
  • 7Vladimir N Vapnik.The Nature of Statistical Learning Theory [M] .New York: Springer, 1995.
  • 8PARAMICS Use, Guide-Version 3.0.U.K.Quadstone Limited[R] .Edinburgh, 1999.
  • 9Sun X T,Mufioz L,Horowitz R.Highway traffic stateestimation using improved mixture kalman filters for ef-fective ramp metering control. Proceedings of the42nd IEEE Conference on Decision and Control . 2003
  • 10Porikli F,Li XK.Traffic congestion estimation usingHMM models without vehicle tracking. IEEE In-telligent Vehicles Symposium . 2004

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