论文标题

通过在近距离情况下推断驾驶员的制动动作来评估车辆碰撞风险的方法

A Method for Vehicle Collision Risk Assessment through Inferring Driver's Braking Actions in Near-Crash Situations

论文作者

Peng, Liqun, Sotelo, Miguel Angel, He, Yi, Ai, Yunfei, Li, Zhixiong

论文摘要

在潜在的车祸下的驾驶信息和数据为广泛的现实观察驾驶员行为和相关因素的广泛观察创造了机会,这些因素会极大地影响紧急情况下的驾驶安全性。此外,此类数据的可用性还可以通过评估近距离冲突场景中的驾驶员行动并提供及时警告,从而增强了避免碰撞系统(CASS)。这些应用激发了能够在驾驶风险,驾驶员/车辆特征和道路环境中推断关系的启发式工具的需求。在本文中,我们获取了数量的实际驾驶数据,并构建了一个综合数据集,其中包含多个“驱动器 - 车辆路”属性。提出的方法分为两个步骤。在第一步中,使用基于可变的精度粗糙集(VPRS)的分类技术来从现场驾驶数据集中绘制简化的核心子集,该数据集提出了与驾驶安全评估最相关的基本属性集。在第二步中,我们通过引入相互信息熵来设计决策策略,以量化每个属性的重要性,然后计算出加权“驾驶员车辆路线”因子的代表性索引,以反映实际情况的驱动风险。在现场试验中收集的驾驶数据的离线分析中证明了所提出的方法的性能,其目的是在下一短期内推断紧急制动动作。结果表明,由于其高预测准确性和稳定性,我们提出的模型是实时提供改进警告的理想选择。

Driving information and data under potential vehicle crashes create opportunities for extensive real-world observations of driver behaviors and relevant factors that significantly influence the driving safety in emergency scenarios. Furthermore, the availability of such data also enhances the collision avoidance systems (CASs) by evaluating driver's actions in near-crash scenarios and providing timely warnings. These applications motivate the need for heuristic tools capable of inferring relationship among driving risk, driver/vehicle characteristics, and road environment. In this paper, we acquired amount of real-world driving data and built a comprehensive dataset, which contains multiple "driver-vehicle-road" attributes. The proposed method works in two steps. In the first step, a variable precision rough set (VPRS) based classification technique is applied to draw a reduced core subset from field driving dataset, which presents the essential attributes set most relevant to driving safety assessment. In the second step, we design a decision strategy by introducing mutual information entropy to quantify the significance of each attribute, then a representative index through accumulation of weighted "driver-vehicle-road" factors is calculated to reflect the driving risk for actual situation. The performance of the proposed method is demonstrated in an offline analysis of the driving data collected in field trials, where the aim is to infer the emergency braking actions in next short term. The results indicate that our proposed model is a good alternative for providing improved warnings in real-time because of its high prediction accuracy and stability.

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