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Autonomous Path Planning for Road Vehicles in Narrow Environments: An Efficient Continuous Curvature Approach

机译:狭窄环境中道路车辆的自主路径规划:一种有效的连续曲率方法

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In this paper we introduce a novel method for obtaining good quality paths for autonomous road vehicles (e.g., cars or buses) in narrow environments. There are many traffic situations in urban scenarios where nontrivial maneuvering in narrow places is necessary. Navigating in cluttered parking lots or having to avoid obstacles blocking the way and finding a detour even in narrow streets are challenging, especially if the vehicle has large dimensions like a bus. We present a combined approximation-based approach to solve the path planning problem in such situations. Our approach consists of a global planner which generates a preliminary path consisting of straight and turning-in-place primitives and a local planner which is used to make the preliminary path feasible to car-like vehicles. The approximation methodology is well known in the literature; however, both components proposed in this paper differ from existing similar planning methods. The approximation process with the proposed local planner is proven to be convergent for any preliminary global paths. The resulting path has continuous curvature which renders our method well suited for application on real vehicles. Simulation experiments show that the proposed method outperforms similar approaches in terms of path quality in complicated planning tasks.
机译:在本文中,我们介绍了一种新颖的方法,用于在狭窄的环境中获得自动驾驶道路车辆(例如汽车或公共汽车)的高质量路径。在城市场景中,有许多交通情况需要在狭窄的地方进行非平凡的机动。即使在狭窄的街道上,在拥挤的停车场中导航或必须避免障碍物以及绕道而行都是具有挑战性的,特别是当车辆具有大尺寸的车辆(如公共汽车)时。我们提出了一种基于近似的组合方法来解决这种情况下的路径规划问题。我们的方法包括一个全局规划器和一个局部规划器,该规划器生成一个由直线和折入原语组成的初步路径,而本地规划器用于使该初步路径对类似汽车的车辆可行。近似方法在文献中是众所周知的。但是,本文提出的两个组成部分都与现有的类似计划方法不同。事实证明,使用拟议的本地规划师进行的近似过程可以收敛于任何初步的全局路径。产生的路径具有连续的曲率,这使我们的方法非常适合在实际车辆上应用。仿真实验表明,该方法在复杂规划任务中的路径质量优于同类方法。

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