论态势空间的临界特征

Daniel Stumper, K. Dietmayer
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引用次数: 3

摘要

安全保障是引入自动驾驶的关键。今天的测试依赖于对关键情况的专家知识。执行真实世界和模拟测试以涵盖尽可能多的测试用例。测试越广泛,自动化功能就越安全,但不确定是否涵盖了所有关键情况。因此,引入了一种表示情境的数学泛化方法——情境空间。为了支持测试情景的选择,本文提出了一种检查情景空间的程序。因此,提供了必要的定义,并解释了使用的方法。此外,在模拟数据上生成所需的数据集,并使用支持向量机进行分类。因此,实现了对情境空间的表征,这是本工作的主要贡献。此外,还将结果与现实世界的情况进行比较和评估,这些结果是从大多数城市交通中记录的试驾中提取的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Criticality Characterization of Situational Space
The assurance of safety is crucial for the introduction of automated driving. Today's testing relies on expert knowledge of critical situations. Real-world and simulation tests are carried out to cover as many test cases as possible. The more extensive the tests, the safer the automated function is assumed, but it is uncertain if all critical situations are covered. Therefore, a mathematical generalization to represent the situations is introduced, the situational space. In order to support the selection of situations to be tested, a procedure to examine the situational space is presented in this paper. Therefore, necessary definitions are provided and the used methods are explained. Additionally, the required datasets are generated on simulated data and classified with support vector machines. Thereby, a characterization of the situational space is achieved, which is the main contribution of this work. Furthermore, the results are compared to and evaluated on real-world situations, that were extracted from recorded test drives in mostly urban traffic.
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