Connected and Automated Vehicles (CAVs) are envisioned to transform the future industrial and private transportation sectors. Due to the complexity of the systems, functional verification and validation of safety aspects are essential before the technology merges into the public domain. In recent years, a scenario-driven approach has gained acceptance for CAVs emphasizing the requirement of a solid data basis of scenarios. The large-scale research facility Test Bed Lower Saxony (TFNDS) enables the provision of substantial information for a database of scenarios on motorways. For that purpose, however, the scenarios of interest must be identified and categorized in the collected trajectory data. This work addresses this problem and proposes a framework for on-ramp scenario identification that also enables for scenario categorization and assessment. The efficacy of the framework is shown with a dataset collected on the TFNDS.
翻译:由于系统的复杂性,安全方面的功能核查和验证在技术并入公共领域之前至关重要,近年来,一种基于情景的方法已获得接受,强调情景的可靠数据基础;大型研究设施测试下萨克森州床(TFNDS)能够为高速公路情景数据库提供大量信息,但为此目的,必须在收集的轨迹数据中查明感兴趣的情景并分类,这项工作解决这一问题,并提出一个也可进行情景分类和评估的网上情景识别框架,框架的效力通过在TRFDS上收集的数据集显示。