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On-road Trajectory Planning with Spatio-temporal RRT* and Always-feasible Quadratic Program

机译:具有时空RRT *和始终可行的二次规划的道路轨迹规划

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On-road trajectory planning is a critical module in an autonomous driving system. Instead of using a path-velocity decomposition or longitudinal-lateral decomposition strategy, this work aims to find a trajectory directly. We adopt a sampleand-search planner to get a coarse trajectory and then polish it via numerical optimization. Among the predominant sampleand-search planners, most of the sampling operations are not flexible, which inevitably lead to a solution failure if the sampling density is low, and suffer from the curse of dimensionality if the sampling density is set high. This work proposes a modified RRT* for trajectory search, aiming to promote the sampling flexibility and to get rid of the search randomness. A quadratic program (QP) based smoother is proposed to refine the coarse trajectory. Herein, the scale of the QP problem is fixed and tractable, and the feasibility of the QP problem is always guaranteed.
机译:道路轨迹规划是自动驾驶系统中的关键模块。代替使用路径速度分解或纵向-横向分解策略,这项工作旨在直接找到轨迹。我们采用抽样搜索计划器来获得粗略的轨迹,然后通过数值优化对其进行抛光。在主要的采样和搜索计划人员中,大多数采样操作都不灵活,如果采样密度较低,则不可避免地导致求解失败,而如果采样密度较高,则必然会遭受维度的诅咒。这项工作提出了一种改进的RRT *用于轨迹搜索,旨在提高采样灵活性并摆脱搜索随机性。提出了一种基于二次程序(QP)的平滑器,以细化粗略的轨迹。在此,QP问题的规模是固定且易于处理的,并且始终保证了QP问题的可行性。

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