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One Ontology to Rule Them All: Corner Case Scenarios for Autonomous Driving

2022-09-01 10:21:53
Daniel Bogdoll, Stefani Guneshka, J. Marius Zöllner

Abstract

The core obstacle towards a large-scale deployment of autonomous vehicles currently lies in the long tail of rare events. These are extremely challenging since they do not occur often in the utilized training data for deep neural networks. To tackle this problem, we propose the generation of additional synthetic training data, covering a wide variety of corner case scenarios. As ontologies can represent human expert knowledge while enabling computational processing, we use them to describe scenarios. Our proposed master ontology is capable to model scenarios from all common corner case categories found in the literature. From this one master ontology, arbitrary scenario-describing ontologies can be derived. In an automated fashion, these can be converted into the OpenSCENARIO format and subsequently executed in simulation. This way, also challenging test and evaluation scenarios can be generated.

Abstract (translated)

URL

https://arxiv.org/abs/2209.00342

PDF

https://arxiv.org/pdf/2209.00342.pdf


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