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Towards a Characterization of Safe Driving Behavior for Automated Vehicles Based on Models of “Typical” Human Driving Behavior

机译:基于“典型”人类驾驶行为的模型,朝着自动化车辆的安全驾驶行为的表征

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Automated driving is expected to play a central role in future mobility systems by enabling, among other benefits, mobility-as-a-service schemes and better road utilization. To this end, automated vehicles must not only be functionally safe. They should also be perceived as driving safely by other traffic participants and have a positive impact on traffic safety. However, to the best of our knowledge, there is no consensus yet on what “driving safely” means. This article proposes a new characterization of safe driving behavior for automated vehicles based on models of “typical” human driving behavior. Such behavior (specially from attentive, experienced drivers) is known to lead to interactions of mid to low severity (i.e., low collision risk). Automated vehicles displaying similar behavior would interact with other traffic participants in a recognizable, predictable, and safe way. As a first step towards this characterization, machine-learning-based models (autoencoders) were developed from longitudinal, naturalistic driving data (from NGSIM). Autoencoders are relatively inexpensive computationally and can monitor whether a vehicle behaves “typically” or not based on anomaly detection principles. Our initial results show that the proposed approach can readily separate typical (safe) from anomalous (unsafe) driving behavior in the considered data set.
机译:预计自动化驾驶将在未来的移动系统中在未来的流动系统中发挥核心作用,其中包括可移动性和服务方案和更好的道路利用。为此,自动车辆不仅必须在功能安全。他们还应被认为安全地被其他交通参与者安全驾驶,并对交通安全产生积极影响。然而,据我们所知,尚未在“安全”的意思上的意义上没有共识。本文提出了基于“典型”人类驾驶行为的模型的自动车辆安全驾驶行为的新表征。已知这种行为(特别是经验丰富的司机),以导致中小期的相互作用(即,低碰撞风险)。显示类似行为的自动化车辆将以可识别的,可预测和安全的方式与其他交通参与者互动。作为朝着这个特征的第一步,基于机器学习的模型(AutoEncoders)是从纵向,自然主义驾驶数据(来自NGSIM)的。自动化器计算得相对便宜,并且可以监控车辆是否行为“通常”或不基于异常检测原理。我们的初始结果表明,所提出的方法可以在所考虑的数据集中轻松地将典型(安全)从异常(不安全)驾驶行为中分开。

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