Systems and functions that rely on machine learning (ML) are the basis of highly automated driving. An essential task of such ML models is to reliably detect and interpret unusual, new, and potentially dangerous situations. The detection of those situations, which we refer to as corner cases, is highly relevant for successfully developing, applying, and validating automotive perception functions in future vehicles where multiple sensor modalities will be used. A complication for the development of corner case detectors is the lack of consistent definitions, terms, and corner case descriptions, especially when taking into account various automotive sensors. In this work, we provide an application-driven view of corner cases in highly automated driving. To achieve this goal, we first consider existing definitions from the general outlier, novelty, anomaly, and out-of-distribution detection to show relations and differences to corner cases. Moreover, we extend an existing camera-focused systematization of corner cases by adding RADAR (radio detection and ranging) and LiDAR (light detection and ranging) sensors. For this, we describe an exemplary toolchain for data acquisition and processing, highlighting the interfaces of the corner case detection. We also define a novel level of corner cases, the method layer corner cases, which appear due to uncertainty inherent in the methodology or the data distribution.
翻译:依靠机器学习(ML)的系统和功能是高度自动化驾驶的基础。这种ML模型的一个基本任务是可靠地探测和解释不寻常、新的和潜在的危险情况。发现这些情况,我们称之为角落案例,对于在今后使用多种传感器模式的车辆中成功开发、应用和验证汽车感知功能非常相关。偏角案件探测器开发的复杂之处是缺乏一致的定义、术语和角落情况说明,特别是在考虑到各种汽车传感器的情况下。在这项工作中,我们对高度自动化驱动的转角案件提供一种由应用程序驱动的视角。为了实现这一目标,我们首先考虑从一般外端、新颖、异常和分配外检测中的现有定义,以显示与角案件的关系和差异。此外,我们扩大现有以相机为重点的转角案件系统化,增加RADAR(无线电探测和测距)和LIDAR(光测和测距)传感器。在这方面,我们描述一个数据获取和处理的模范式工具链,突出角落探测的界面。为了实现这一目标,我们首先考虑从一般外端、新颖、反常态、异常和分界探测的现有定义方法。我们还界定了一个新的角案件分界层。