为自动驾驶系统测试生成可避免的碰撞场景

Alessandro Calò, Paolo Arcaini, Shaukat Ali, Florian Hauer, F. Ishikawa
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引用次数: 59

摘要

自动驾驶和自动驾驶系统(ADS)是移动出行领域的一项变革性技术。目前测试ADS的做法是在计算机模拟中使用虚拟测试;基于搜索的方法用于发现特别危险的情况,可能是碰撞。然而,当发现碰撞时,如果不依赖于领域专家的离线分析,自动评估ADS是否应该能够避免碰撞并不总是容易的。在本文中,我们提出了一个可避免碰撞的定义,它不依赖于任何领域知识,而只依赖于以避免碰撞的方式重新配置ADS(在我们的案例中,是由我们的行业合作伙伴提供的路径规划器组件)是可能的。基于这个定义,我们提出了两种基于搜索的方法来寻找可避免的碰撞。第一种方法(称为顺序方法)基于当前的工业实践,首先搜索碰撞,然后搜索ADS的替代配置,以避免碰撞。相反,第二种方法(称为组合方法)同时搜索冲突和避免冲突的备选配置。实验表明,即使顺序方法没有发现任何可避免的碰撞,组合方法也能找到更多可避免的碰撞;事实上,在第一次搜索中,顺序方法可能会发现过于严重的碰撞,没有替代配置可以避免它们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating Avoidable Collision Scenarios for Testing Autonomous Driving Systems
Automated and autonomous driving systems (ADS) are a transformational technology in the mobility sector. Current practice for testing ADS uses virtual tests in computer simulations; search-based approaches are used to find particularly dangerous situations, possibly collisions. However, when a collision is found, it is not always easy to automatically assess whether the ADS should have been able to avoid it, without relying on offline analyses by domain experts. In this paper, we propose a definition of avoidable collision that does not rely on any domain knowledge, but only on the fact that it is possible to reconFigure the ADS (in our case, the path planner component provided by our industry partner) in a way that the collision is avoided. Based on this definition, we propose two search-based approaches for finding avoidable collisions. The first one (named sequential approach), based on current industrial practice, first searches for a collision, and then searches for an alternative configuration of the ADS which avoids it. The second one (named combined approach), instead, searches at the same time for the collision and for the alternative configuration which avoids it. Experiments show that the combined approach finds more avoidable collisions, even when the sequential approach doesn’t find any; indeed, the sequential approach, in the first search, may find too severe collisions for which there is no alternative configuration that can avoid them.
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