With the increasing safety validation requirements for the release of a self-driving car, alternative approaches, such as simulation-based testing, are emerging in addition to conventional real-world testing. In order to rely on virtual tests the employed sensor models have to be validated. For this reason, it is necessary to quantify the discrepancy between simulation and reality in order to determine whether a certain fidelity is sufficient for a desired intended use. There exists no sound method to measure this simulation-to-reality gap of radar perception for autonomous driving. We address this problem by introducing a multi-layered evaluation approach, which consists of a combination of an explicit and an implicit sensor model evaluation. The former directly evaluates the realism of the synthetically generated sensor data, while the latter refers to an evaluation of a downstream target application. In order to demonstrate the method, we evaluated the fidelity of three typical radar model types (ideal, data-driven, ray tracing-based) and their applicability for virtually testing radar-based multi-object tracking. We have shown the effectiveness of the proposed approach in terms of providing an in-depth sensor model assessment that renders existing disparities visible and enables a realistic estimation of the overall model fidelity across different scenarios.
翻译:由于对自动驾驶汽车的释放安全认证要求日益增加,除了传统的现实世界测试之外,正在出现其他替代方法,例如模拟测试,例如模拟测试,以取代传统的现实世界测试。为了依靠虚拟测试,必须验证所采用的传感器模型。为此,有必要量化模拟与现实之间的差异,以便确定某种真实性是否足以达到预期的预期用途。没有健全的方法来衡量自动驾驶雷达感知的模拟到现实差距。我们通过采用多层次的评价方法解决这个问题,其中包括一个明确和隐含的传感器模型评价。前者直接评价合成产生的传感器数据的真实性,而后者是指对下游目标应用的评价。为了证明这一方法,我们评估了三种典型雷达模型类型(理想、数据驱动、射线追踪)的准确性及其在虚拟测试基于雷达的多点跟踪中的适用性。我们从提供深入的传感器模型评估的角度展示了拟议方法的有效性,这种评估使得现有差异可见并能够真实地估计不同的模型。