Automatic Incident Detection and Classification at Intersections.

Auteur(s)
Cano, J. Kovaceva, J. Lindman, M. & Braennstroem, M.
Jaar
Samenvatting

Collisions at intersections are common and their consequences are often severe. This paper addresses the need for information on accident causation; a knowledge that can be used to obtain more effective countermeasures. A novel method that can be applied to data recorded in a ground-based observation system or similar is proposed for classifying vehicle interactions into a set of predefined traffic scenarios. The classification is based on possible combinations of trajectories of two interacting vehicles that have passed through an intersection. Additionally, the authors present an incident detection algorithm that uses the classified vehicle interactions. This algorithm constitutes the core of a video-based automatic incident detection at intersections (AIDI) system. The performance of the AIDI system was successfully verified both in a driving simulator and in real traffic conditions. The full text of this paper may be found at: http://www-nrd.nhtsa.dot.gov/pdf/esv/esv21/09-0234.pdf For the covering abstract see ITRD E145407.

Publicatie

Bibliotheeknummer
C 49892 (In: C 49887 CD-ROM) /82 /73 / ITRD E145482
Uitgave

In: Proceedings of the 21st International Technical Conference on Enhanced Safety of Vehicles ESV, Stuttgart, Germany, June 15-18, 2009, Pp.

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