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Modelling of uncertain reactive human driving behavior: a classification approach

机译:不确定的被动人类驾驶行为建模:一种分类方法

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This paper discusses a novel approach to model human driver behavior. A classification-based method is proposed to construct a reactive bound on possible human driving actions given the scenario description (such as the vehicle states and the behavior of surrounding vehicles). This approach captures the reactiveness and uncertainty of human drivers. Real human driving data is used as the positive training data, while dangerous actions sampled via a Hamilton Jacobi reachability computation constitute the negative training data. A classifier that separates the two groups is then trained via a customized L1. Support Vector Machine (SVM), and an analytical bound function is derived from the classifier which maps the state and surrounding vehicles' actions to the bound on possible actions of the human driver. The credibility of the proposed approach is analyzed under the random convex optimization framework. Potential applications of this work include the computation of safe sets, synthesis of safety guaranteed controllers for systems interacting with humans such as autonomous vehicles, and evaluation of such systems.
机译:本文讨论了一种模拟人类驾驶员行为的新颖方法。提出了一种基于分类的方法,以在给定场景描述(例如车辆状态和周围车辆的行为)的情况下,对可能的人类驾驶行为构造反应性边界。这种方法捕获了人类驾驶员的反应性和不确定性。真实的人类驾驶数据用作正面训练数据,而通过汉密尔顿·雅各比可及性计算得出的危险动作则构成负面的训练数据。然后,通过定制的L1训练将两个组分开的分类器。支持向量机(SVM),并从分类器派生出解析边界函数,该函数将状态和周围车辆的行为映射到人类驾驶员可能发生的行为的边界。在随机凸优化框架下分析了该方法的可信度。这项工作的潜在应用包括安全集的计算,用于与人互动的系统(例如自动驾驶汽车)的安全保证控制器的综合以及此类系统的评估。

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