基于模糊属性地图匹配的高速公路危险驾驶事件预测

C. Fang, Bo Wu, Jung-Ming Wang, Sei-Wang Chen
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引用次数: 4

摘要

提出了一种高速公路危险驾驶事件预测系统。预测系统涉及三个主要任务:(1)如何在驾驶条件的输入序列上感知驾驶事件,(2)如何表示驾驶事件,(3)如何解释驾驶事件以确定其是否危险。引入了一种称为属性驱动关系图(ADRM)的有向无环图来表示驱动事件。ADRM按驾驶条件记录驾驶事件。该预测系统采用模糊属性地图匹配技术,将其ADRM与数据库中保存的已知危险驾驶事件进行匹配,从而对驾驶事件进行评估,判断其是否危险。数据库可以通过包含新的危险驾驶事件来自动扩展,这些事件符合任何预定义的危险标准。通过驾驶模拟器生成的综合算例进行了一系列实验,验证了所提系统的可行性和合理性。
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Dangerous driving event prediction on expressways using fuzzy attributed map matching
This paper presents a system for predicting dangerous driving events while driving on an expressway. There are three major tasks involved in the prediction system: (1) how to perceive driving events on the input sequence of driving conditions, (2) how to represent driving events, and (3) how to interpret driving events to decide whether or not they are hazardous. A directed acyclic graph, called the attributed driving relational map (ADRM), is introduced to represent driving events. The ADRM chronicles a driving event in terms of driving conditions. The prediction system evaluates the driving event to determine whether it is perilous or not by matching its ADRM against those of known dangerous driving events preserved in a database using a fuzzy attributed map matching technique. The database can automatically augment by including new dangerous driving events that approved any of the predefined danger criteria. A series of experiments with synthetic examples generated by a driving simulator have been conducted to demonstrate the feasibility and rationality of the proposed system.
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