Verification and validation are major challenges for developing automated driving systems. A concept that gets more and more recognized for testing in automated driving is scenario-based testing. However, it introduces the problem of what scenarios are relevant for testing and which are not. This work aims to find relevant, interesting, or critical parameter sets within logical scenarios by utilizing Bayes optimization and Gaussian processes. The parameter optimization is done by comparing and evaluating six different metrics in two urban intersection scenarios. Finally, a list of ideas this work leads to and should be investigated further is presented.
翻译:核查和验证是开发自动驾驶系统面临的主要挑战。自动驾驶测试越来越为人们所认识的一个概念是以假设情况为基础的测试。然而,它提出了哪些情景与测试相关,哪些与测试无关的问题。这项工作的目的是利用Bayes优化和Gaussian流程,在逻辑情景中找到相关、有趣或关键参数组。参数优化是通过比较和评价两个城市交叉情景中的6个不同度量来完成的。最后,提出了这项工作导致并应当进一步研究的想法清单。