论文标题
现实世界的挖掘用于评估自动车辆
Real-World Scenario Mining for the Assessment of Automated Vehicles
论文作者
论文摘要
基于方案的评估自动化车辆(AV)的方法得到了汽车场中许多玩家的广泛支持。从现实世界数据中捕获的方案可用于定义评估的方案并估计其相关性。因此,提出了不同的技术来捕获现实世界数据的方案。在本文中,我们提出了一种使用两步方法从现实世界数据中捕获场景的新方法。第一步是将数据自动标记为标签。其次,我们根据标签标签的标签组合来挖掘以标签组合表示的场景。我们方法的好处之一是标签可用于识别不同类型方案之间共享的方案的特征。这样,只需要确定一次这些特征。此外,该方法并非针对一种类型的方案,因此可以应用于多种情况。我们提供了两个示例来说明该方法。本文以我们的方法有一些有希望的未来可能性,例如自动生成自动化车辆的场景。
Scenario-based methods for the assessment of Automated Vehicles (AVs) are widely supported by many players in the automotive field. Scenarios captured from real-world data can be used to define the scenarios for the assessment and to estimate their relevance. Therefore, different techniques are proposed for capturing scenarios from real-world data. In this paper, we propose a new method to capture scenarios from real-world data using a two-step approach. The first step consists in automatically labeling the data with tags. Second, we mine the scenarios, represented by a combination of tags, based on the labeled tags. One of the benefits of our approach is that the tags can be used to identify characteristics of a scenario that are shared among different type of scenarios. In this way, these characteristics need to be identified only once. Furthermore, the method is not specific for one type of scenario and, therefore, it can be applied to a large variety of scenarios. We provide two examples to illustrate the method. This paper is concluded with some promising future possibilities for our approach, such as automatic generation of scenarios for the assessment of automated vehicles.