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Traffic event classification at intersections based on the severity of abnormality

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Abstract

This paper proposes a novel traffic event classification approach using event severities at intersections. The proposed system basically learns normal and common traffic flow by clustering vehicle trajectories. Common vehicle routes are generated by implementing trajectory clustering with Continuous Hidden Markov Model. Vehicle abnormality is detected by observing maximum likelihoods of partial vehicle locations and velocities on underlying common route models. The second part of the work is based on extracting the severities of abnormality by deviation measurement using Coefficient of Variances method. By using abnormal event samples, two severity classes are built in order to recognize event severities by Support Vector Machines and k-Nearest Neighborhood algorithms. Experimental results show that the proposed model has high precision with satisfactory incident detection and event severity classification performance.

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Correspondence to Ömer Aköz.

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Aköz, Ö., Karsligil, M.E. Traffic event classification at intersections based on the severity of abnormality. Machine Vision and Applications 25, 613–632 (2014). https://doi.org/10.1007/s00138-011-0390-4

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