A Comprehensive Review on Ontologies for Scenario-based Testing in the Context of Autonomous Driving
The verification and validation of autonomous driving vehicles remains a major challenge due to the high complexity of autonomous driving functions. Scenario-based testing is a promising method for validating such a complex system. Ontologies can be utilized to produce test scenarios that are both m...
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Zusammenfassung: | The verification and validation of autonomous driving vehicles remains a
major challenge due to the high complexity of autonomous driving functions.
Scenario-based testing is a promising method for validating such a complex
system. Ontologies can be utilized to produce test scenarios that are both
meaningful and relevant. One crucial aspect of this process is selecting the
appropriate method for describing the entities involved. The level of detail
and specific entity classes required will vary depending on the system being
tested. It is important to choose an ontology that properly reflects these
needs.
This paper summarizes key representative ontologies for scenario-based
testing and related use cases in the field of autonomous driving. The
considered ontologies are classified according to their level of detail for
both static facts and dynamic aspects. Furthermore, the ontologies are
evaluated based on the presence of important entity classes and the relations
between them. |
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DOI: | 10.48550/arxiv.2304.10837 |