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基于马尔可夫毯和序列最小优化(MB-SMO)的危险交通事件检测

Hazardous Traffic Event Detection Using Markov Blanket and Sequential Minimal Optimization (MB-SMO).

作者信息

Yan Lixin, Zhang Yishi, He Yi, Gao Song, Zhu Dunyao, Ran Bin, Wu Qing

机构信息

Intelligent Transport Systems Research Center, Wuhan University of Technology, Wuhan 430063, China.

Engineering Research Center for Transportation Safety, Ministry of Education, Wuhan 430063, China.

出版信息

Sensors (Basel). 2016 Jul 13;16(7):1084. doi: 10.3390/s16071084.

Abstract

The ability to identify hazardous traffic events is already considered as one of the most effective solutions for reducing the occurrence of crashes. Only certain particular hazardous traffic events have been studied in previous studies, which were mainly based on dedicated video stream data and GPS data. The objective of this study is twofold: (1) the Markov blanket (MB) algorithm is employed to extract the main factors associated with hazardous traffic events; (2) a model is developed to identify hazardous traffic event using driving characteristics, vehicle trajectory, and vehicle position data. Twenty-two licensed drivers were recruited to carry out a natural driving experiment in Wuhan, China, and multi-sensor information data were collected for different types of traffic events. The results indicated that a vehicle's speed, the standard deviation of speed, the standard deviation of skin conductance, the standard deviation of brake pressure, turn signal, the acceleration of steering, the standard deviation of acceleration, and the acceleration in Z (G) have significant influences on hazardous traffic events. The sequential minimal optimization (SMO) algorithm was adopted to build the identification model, and the accuracy of prediction was higher than 86%. Moreover, compared with other detection algorithms, the MB-SMO algorithm was ranked best in terms of the prediction accuracy. The conclusions can provide reference evidence for the development of dangerous situation warning products and the design of intelligent vehicles.

摘要

识别危险交通事件的能力已被视为减少碰撞事故发生的最有效解决方案之一。以往的研究仅针对某些特定的危险交通事件展开,且主要基于专用视频流数据和GPS数据。本研究的目的有两个:(1)采用马尔可夫毯(MB)算法提取与危险交通事件相关的主要因素;(2)开发一个利用驾驶特性、车辆轨迹和车辆位置数据来识别危险交通事件的模型。招募了22名有执照的驾驶员在中国武汉进行自然驾驶实验,并针对不同类型的交通事件收集多传感器信息数据。结果表明,车辆速度、速度标准差、皮肤电导率标准差、制动压力标准差、转向灯、转向加速度、加速度标准差以及Z轴加速度(重力)对危险交通事件有显著影响。采用序列最小优化(SMO)算法构建识别模型,预测准确率高于86%。此外,与其他检测算法相比,MB-SMO算法在预测准确率方面排名最佳。研究结论可为危险情况预警产品的开发和智能车辆的设计提供参考依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/df9f/4970130/f0d4926d0e80/sensors-16-01084-g001.jpg

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