Automated driving has become a major topic of interest not only in the active research community but also in mainstream media reports. Visual perception of such intelligent vehicles has experienced large progress in the last decade thanks to advances in deep learning techniques but some challenges still remain. One such challenge is the detection of corner cases. They are unexpected and unknown situations that occur while driving. Conventional visual perception methods are often not able to detect them because corner cases have not been witnessed during training. Hence, their detection is highly safety-critical, and detection methods can be applied to vast amounts of collected data to select suitable training data. A reliable detection of corner cases will not only further automate the data selection procedure and increase safety in autonomous driving but can thereby also affect the public acceptance of the new technology in a positive manner. In this work, we continue a previous systematization of corner cases on different levels by an extended set of examples for each level. Moreover, we group detection approaches into different categories and link them with the corner case levels. Hence, we give directions to showcase specific corner cases and basic guidelines on how to technically detect them.
翻译:由于深层学习技术的进步,对此类智能车辆的视觉认识在过去十年里取得了很大进展,但仍然存在一些挑战。这种挑战之一是发现转角情况,这是在开车时发生的意外和未知情况。常规视觉观察方法往往无法发现它们,因为没有在训练期间看到转角情况。因此,探测方法非常安全,检测方法可用于大量收集的数据,以选择适当的培训数据。可靠地发现转角情况不仅会进一步使数据选择程序自动化,提高自主驾驶的安全性,而且还会影响公众对新技术的积极接受。在这项工作中,我们继续将不同层次的转角情况系统化,为每个级别提供一系列扩展的实例。此外,我们把检测方法分为不同的类别,并将它们与转角情况联系起来。因此,我们指示如何展示具体的转角案件和如何在技术上发现它们的基本准则。