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Optimal Vehicle Path Planning Using Quadratic Optimization for Baidu Apollo Open Platform

机译:利用百度Apollo开放平台二次优化的最佳车辆路径规划

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Path planning is a key component in motion planning for autonomous vehicles. A path specifies the geometrical shape that the vehicle will travel, thus, it is critical to safe and comfortable vehicle motions. For urban driving scenarios, autonomous vehicles need the ability to navigate in cluttered environment, e.g., roads partially blocked by a number of vehicles/obstacles on the sides. How to generate a kinematically feasible and smooth path, that can avoid collision in complex environment, makes path planning a challenging problem. In this paper, we present a novel quadratic programming approach that generates optimal paths with resolution-complete collision avoidance capability.
机译:路径规划是自动车辆运动规划中的关键组成部分。路径指定车辆将行进的几何形状,因此,对安全舒适和舒适的车辆运动至关重要。对于城市驾驶场景,自治车辆需要在杂乱的环境中导航,例如,部分阻挡两侧的车辆/障碍物的道路。如何生成运动学上可行和平滑的路径,可以避免在复杂环境中发生碰撞,使路径规划有挑战性的问题。在本文中,我们提出了一种新的二次编程方法,可以产生分辨率完全碰撞避免能力的最佳路径。

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