Our transportation world is rapidly transforming induced by an ever increasing level of autonomy. However, to obtain license of fully automated vehicles for widespread public use, it is necessary to assure safety of the entire system, which is still a challenge. This holds in particular for AI-based perception systems that have to handle a diversity of environmental conditions and road users, and at the same time should robustly detect all safety relevant objects (i.e no detection misses should occur). Yet, limited training and validation data make a proof of fault-free operation hardly achievable, as the perception system might be exposed to new, yet unknown objects or conditions on public roads. Hence, new safety approaches for AI-based perception systems are required. For this reason we propose in this paper a novel hierarchical monitoring approach that is able to validate the object list from a primary perception system, can reliably detect detection misses, and at the same time has a very low false alarm rate.
翻译:我们的运输世界正因日益增强的自主性而迅速变化,然而,为了获得完全自动化的车辆的许可证供公众广泛使用,有必要确保整个系统的安全,这仍然是一个挑战。这尤其关系到基于AI的感知系统,这些系统必须处理各种各样的环境条件和道路使用者,同时应有力地检测所有相关的安全物体(即不应出现检测误差 ) 。然而,有限的培训和验证数据很难证明没有故障的操作,因为感知系统可能接触到新的、但未知的物体或公共道路上的条件。因此,需要为基于AI的感知系统制定新的安全方法。 为此,我们在本文件中提出一种新的等级监测方法,能够从初级感知系统中验证对象清单,能够可靠地检测误差,同时出现非常低的错误警报率。