Attention-based Sampling Distribution for Motion Planning in Autonomous Driving

Jikun Rong, S. Arrigoni, N. Luan, F. Braghin
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引用次数: 1

Abstract

Sampling-based motion planning(SMPs) approach has been very popular for its ability of computing collision-free and asymptotically optimal path without explicit formulation of the configuration space. SMPs use sampling to generate a discrete representation of the problem and then run graph searching algorithm on this representation. Which means the representation itself is at least as important as graph searching algorithm. In general this is enabled by uniformly sampling the configuration space. This paper proposes a machine learning based biased sampling approach for autonomous driving. The sampling distribution was learned from previous demonstrations using conditional variational encoder(CVAE) with attention mechanism. Combined with a sampling-based algorithm called rapidly-exploring random tree*(RRT*), we proposed Attention-RRT*. This approach was proved to be effective in several driving scenarios.
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基于注意力的自动驾驶运动规划采样分布
基于采样的运动规划(SMPs)方法因其无需显式构造空间即可计算无碰撞和渐近最优路径的能力而受到广泛欢迎。smp使用抽样来生成问题的离散表示,然后在该表示上运行图搜索算法。这意味着表示本身至少和图搜索算法一样重要。通常,这可以通过对配置空间进行统一采样来实现。提出了一种基于机器学习的自动驾驶偏差抽样方法。采样分布是通过使用带有注意机制的条件变分编码器(CVAE)从前面的演示中学习到的。结合基于采样的快速探索随机树(RRT)算法,提出了Attention-RRT算法。这种方法在几个驾驶场景中被证明是有效的。
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