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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Aware of Scene Vehicles—Probabilistic Modeling of Car-Following Behaviors in Real-World Traffic
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Aware of Scene Vehicles—Probabilistic Modeling of Car-Following Behaviors in Real-World Traffic

机译:意识到现场车辆 - 在现实世界交通中的汽车跟踪行为的概率建模

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摘要

Heterogeneity exists in car following behaviors clue to the driver's habit, fatigue, distraction, or surrounding traffic. This research proposes a method of modeling and reasoning heterogeneous car-following behaviors based on a stochastic system, where scene vehicles are involved explicitly in addition to the traditional leader-follower pair in characterizing driving situations, a hidden variable (driver state) is introduced to conjugate driving situations to heterogeneous models in predicting a driver's acceleration control, and the dynamic procedure is described using a dynamic Bayesian network. Experiments are conducted using a large set of naturalistic driving data that were collected by driving an instrumented vehicle on the multi-lane motorways in Beijing, where four distinctive driver states are learnt from data, characterizing the car-following procedure with normal, slow responsive, strong and prompt responsive, and unresponsive behavioral styles. By using the proposed scene-aware multi-state model for acceleration prediction, the error is reduced to 0.19 m/s(2) in average compared with 0.29 m/s(2) of a single-state model. Influence of scene vehicles on a driver state and subsequently on velocity control is verified based on the data. To the best of our knowledge, this is the first work that explicitly incorporates scene vehicles as influential factors in a probabilistic approach for modeling and reasoning heterogeneous car-following behaviors, and the performance is demonstrated on a large set of naturalistic driving data.
机译:在驾驶员习惯,疲劳,分心或周围交通的行为线索之后存在异质性。该研究提出了一种基于随机系统建模和推理的异构车辆跟踪行为的方法,其中除了传统的引导型驾驶情况下,在表征驾驶情况时明确地涉及场景车辆,将引入隐藏变量(驱动器状态)在预测驾驶员加速度控制时共轭驾驶情况以异质模型,并且使用动态贝叶斯网络描述动态程序。使用大量的自然主义的驾驶数据进行了通过在北京的多车道高速公路上驾驶仪表车辆来进行的,其中来自数据的四个独特的驾驶员状态,以正常,慢的响应,表征了汽车之后的过程,强大,迅速响应,无响应行为风格。通过使用所提出的场景感知多状态模型进行加速预测,与单状态模型的0.29 m / s(2)相比,误差平均降至0.19 m / s(2)。场景车辆对驾驶员状态和随后对速度控制的影响是基于数据验证的。据我们所知,这是一项明确地将场景车辆纳入了概率方法的影响因素,用于建模和推理异构跟踪行为的概率方法,并且在大量的自然主义的驾驶数据上证明了性能。

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