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arxiv 2205.01532 v2 pith:JTXU422Q submitted 2022-05-03 cs.AI cs.LO

Using Ontologies for the Formalization and Recognition of Criticality for Automated Driving

classification cs.AI cs.LO
keywords automatedknowledgerepresentationtrafficcontextcriticalityfactorsformalization
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Knowledge representation and reasoning has a long history of examining how knowledge can be formalized, interpreted, and semantically analyzed by machines. In the area of automated vehicles, recent advances suggest the ability to formalize and leverage relevant knowledge as a key enabler in handling the inherently open and complex context of the traffic world. This paper demonstrates ontologies to be a powerful tool for a) modeling and formalization of and b) reasoning about factors associated with criticality in the environment of automated vehicles. For this, we leverage the well-known 6-Layer Model to create a formal representation of the environmental context. Within this representation, an ontology models domain knowledge as logical axioms, enabling deduction on the presence of critical factors within traffic scenes and scenarios. For executing automated analyses, a joint description logic and rule reasoner is used in combination with an a-priori predicate augmentation. We elaborate on the modular approach, present a publicly available implementation, and evaluate the method by means of a large-scale drone data set of urban traffic scenarios.

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