E. D. Gelder, E. Cator, J. Paardekooper, O. O. D. Camp, B. Schutter
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引用次数: 4
Abstract
The safety assessment of Automated Vehicles (AVs) is an important aspect of the development cycle of AVs. A scenario-based assessment approach is accepted by many players in the field as part of the complete safety assessment. A scenario is a representation of a situation on the road to which the AV needs to respond appropriately. One way to generate the required scenario-based test descriptions is to parameterize the scenarios and to draw these parameters from a probability density function (pdf). Because the shape of the pdf is unknown beforehand, assuming a functional form of the pdf and fitting the parameters to the data may lead to inaccurate fits. As an alternative, Kernel Density Estimation (KDE) is a promising candidate for estimating the underlying pdf, because it is flexible with the underlying distribution of the parameters. Drawing random samples from a pdf estimated with KDE is possible without the need of evaluating the actual pdf, which makes it suitable for drawing random samples for, e.g., Monte Carlo methods. Sampling from a KDE while the samples satisfy a linear equality constraint, however, has not been described in the literature, as far as the authors know.In this paper, we propose a method to sample from a pdf estimated using KDE, such that the samples satisfy a linear equality constraint. We also present an algorithm of our method in pseudo-code. The method can be used to generating scenarios that have, e.g., a predetermined starting speed or to generate different types of scenarios. This paper also shows that the method for sampling scenarios can be used in case a Singular Value Decomposition (SVD) is used to reduce the dimension of the parameter vectors.
自动驾驶汽车的安全评估是自动驾驶汽车开发周期的一个重要方面。基于场景的评估方法被该领域的许多参与者所接受,作为完整安全评估的一部分。场景是指自动驾驶汽车需要做出适当反应的道路上的情况。生成所需的基于场景的测试描述的一种方法是对场景进行参数化,并从概率密度函数(pdf)中绘制这些参数。由于事先不知道pdf的形状,假设pdf的函数形式并将参数拟合到数据可能会导致不准确的拟合。作为一种替代方法,内核密度估计(Kernel Density Estimation, KDE)是估计底层pdf的一个很有前途的候选方法,因为它可以灵活地处理底层参数的分布。从使用KDE估计的pdf中抽取随机样本是可能的,而不需要评估实际的pdf,这使得它适合于抽取随机样本,例如,蒙特卡罗方法。然而,据作者所知,在样本满足线性等式约束的情况下从KDE进行抽样,在文献中还没有描述。在本文中,我们提出了一种从使用KDE估计的pdf中抽样的方法,使得样本满足线性等式约束。并给出了该方法的伪代码算法。该方法可用于生成具有例如预定启动速度的场景,或用于生成不同类型的场景。本文还表明,在使用奇异值分解(SVD)对参数向量进行降维的情况下,该方法可以用于采样场景。