一种准确有效的概率冲突预测方法

Christian E. Roelofse, C. E. V. Daalen
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引用次数: 0

摘要

冲突预测是自动驾驶汽车路径规划的重要组成部分。预测方法必须准确可靠的导航,但也计算效率高,使在线路径规划。在测试大量候选轨迹集时,有效的预测方法尤为重要。我们提出了一种预测方法,它具有与现有方法相同的精度,但速度提高了一个数量级。这是通过使用降维变换根据首次通过的时间分布重写冲突预测问题来实现的。对描述车辆运动的高斯过程子集的首次通过时间分布进行了解析推导。该方法适用于二维随机过程,其中均值可以用线段近似,冲突边界可以用分段直线近似。在仿真中对该方法进行了验证,并与两种概率流方法以及一种最新的瞬时冲突概率方法进行了比较。结果表明,计算时间显著减少。
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An accurate and efficient approach to probabilistic conflict prediction
Conflict prediction is a vital component of path planning for autonomous vehicles. Prediction methods must be accurate for reliable navigation, but also computationally efficient to enable online path planning. Efficient prediction methods are especially crucial when testing large sets of candidate trajectories. We present a prediction method that has the same accuracy as existing methods, but up to an order of magnitude faster. This is achieved by rewriting the conflict prediction problem in terms of the first-passage time distribution using a dimension-reduction transform. First-passage time distributions are analytically derived for a subset of Gaussian processes describing vehicle motion. The proposed method is applicable to 2-D stochastic processes where the mean can be approximated by line segments, and the conflict boundary can be approximated by piece-wise straight lines. The proposed method was tested in simulation and compared to two probability flow methods, as well as a recent instantaneous conflict probability method. The results demonstrate a significant decrease of computation time.
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