The overall goal of this work is to enrich training data for automated driving with so called corner cases. In road traffic, corner cases are critical, rare and unusual situations that challenge the perception by AI algorithms. For this purpose, we present the design of a test rig to generate synthetic corner cases using a human-in-the-loop approach. For the test rig, a real-time semantic segmentation network is trained and integrated into the driving simulation software CARLA in such a way that a human can drive on the network's prediction. In addition, a second person gets to see the same scene from the original CARLA output and is supposed to intervene with the help of a second control unit as soon as the semantic driver shows dangerous driving behavior. Interventions potentially indicate poor recognition of a critical scene by the segmentation network and then represents a corner case. In our experiments, we show that targeted enrichment of training data with corner cases leads to improvements in pedestrian detection in safety relevant episodes in road traffic.
翻译:这项工作的总体目标是用所谓的角箱来丰富自动化驾驶的培训数据。在道路交通中,角箱是关键、罕见和不寻常的情况,对AI算法的感知提出了挑战。为此目的,我们提出设计一个测试钻机,以便使用人行环法生成合成角箱。对于测试钻机来说,一个实时语义分解网络经过培训,并被纳入驾驶模拟软件CARLA。此外,第二人从原CARLA产出中看到同样的场景,一旦语义驱动器显示危险的驾驶行为,就应该在第二个控制单位的帮助下进行干预。干预可能表明分解网络对关键场景认识不足,然后代表一个角落案例。在我们的实验中,我们显示,有针对性地充实带有角箱的培训数据有助于改进道路交通安全相关事件的行人探测。