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Human-Like Trajectory Planning on Curved Road: Learning From Human Drivers

机译:弯曲道路的人类轨迹规划:从人类司机学习

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摘要

The ultimate goal of self-driving technologies is to offer a safe and human-like driving experience. As one of the most important enabling functionalities, trajectory planning has been extensively studied from the perspective of safety. However, human-like trajectory planning on curved roads has rarely been studied. In this paper, we characterize and model human driving using extensive experimental driving collected on an urban curved road with 30 participants (10 experienced and 20 novice drivers) and five vehicles of different types. Differential global positioning system (GPS) is used to measure vehicle positions in high precision. We study factors that affect the driving trajectory, including vehicle speed, road curvature, and sight distance. We find that the human drivers typically do not follow lane centerline and the human-driven trajectories are very different from planners like rapidly exploring random tree (RRT). To generate human-like driving trajectory, we develop a data-driven trajectory model using general regression neural network (GRNN). The model was validated in various cases with promising performance.
机译:自动驾驶技术的最终目标是提供安全和人类的驾驶体验。作为最重要的能力功能之一,从安全的角度广泛地研究了轨迹规划。然而,弯曲道路上的人类轨迹规划很少已经研究过。在本文中,我们在城市弯曲道路上使用了30名参与者(10名经验丰富的20名新手司机)和不同类型的车辆,使用大量实验驾驶的特征和模型人类驾驶。差动全球定位系统(GPS)用于测量高精度的车辆位置。我们研究影响驾驶轨迹的因素,包括车速,道路曲率和视线距离。我们发现人类驱动程序通常不关注泳道中心线,人类驱动的轨迹与策划者相反,如迅速探索随机树(RRT)。为了产生人类的驾驶轨迹,我们使用一般回归神经网络(GRNN)开发数据驱动的轨迹模型。该模型在各种案例中验证,具有良好的表现。

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