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首页> 外文期刊>IEEE Robotics and Automation Letters >A Probabilistic Framework for Imitating Human Race Driver Behavior
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A Probabilistic Framework for Imitating Human Race Driver Behavior

机译:模仿人类驾驶员行为的概率框架

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Understanding and modeling human driver behavior is crucial for advanced vehicle development. However, unique driving styles, inconsistent behavior, and complex decision processes render it a challenging task, and existing approaches often lack variability or robustness. To approach this problem, we propose Probabilistic Modeling of Driver behavior, a modular framework which splits the task of driver behavior modeling into multiple modules. A global target trajectory distribution is learned with Probabilistic Movement Primitives, clothoids are utilized for local path generation, and the corresponding choice of actions is performed by a neural network. Experiments in a simulated car racing setting show considerable advantages in imitation accuracy and robustness compared to other imitation learning algorithms. The modular architecture of the proposed framework facilitates straightforward extensibility in driving line adaptation and sequencing of multiple movement primitives for future research.
机译:理解和建模人类司机行为对于先进的汽车发展至关重要。然而,独特的驾驶样式,不一致行为和复杂的决策过程使其成为一个具有挑战性的任务,并且现有方法通常缺乏可变性或稳健性。为了解决这个问题,我们提出了驾驶员行为的概率建模,模块化框架将驾驶员行为建模的任务分成多个模块。通过概率的运动原语来学习全局目标轨迹分布,用于局部路径生成的薄帘,并且通过神经网络执行相应的动作选择。与其他仿制算法相比,模拟赛车赛车设定的实验表明了模仿精度和鲁棒性的相当大的优点。所提出的框架的模块化架构有助于驱动线适应和对未来研究的多个运动原语的排序方便的可扩展性。

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