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Spatiotemporal Road Traffic Anomaly Detection: A Tensor-Based Approach (CROSBI ID 302735)

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Tišljarić, Leo ; Fernandes, Sofia ; Gama, João ; Carić, Tonči Spatiotemporal Road Traffic Anomaly Detection: A Tensor-Based Approach // Applied sciences (Basel), 11 (2021), 24; 12017, 17. doi: 10.3390/app112412017

Podaci o odgovornosti

Tišljarić, Leo ; Fernandes, Sofia ; Gama, João ; Carić, Tonči

engleski

Spatiotemporal Road Traffic Anomaly Detection: A Tensor-Based Approach

The increased development of urban areas results in a larger number of vehicles on the road network, leading to traffic congestion, which often leads to potentially dangerous situations that can be described as anomalies. The tensor-based methods emerged only recently in applications related to traffic anomaly detection. They outperform other models regarding simultaneously capturing spatial and temporal components, which are of immense importance in traffic dataset analysis. This paper presents a tensor-based method for extracting the spatiotemporal road traffic patterns represented with the speed transition matrices, with the goal of anomaly detection. A novel anomaly detection approach is presented, which relies on computing the center of mass of the observed traffic patterns. The method was evaluated on a large road traffic dataset and was able to detect the most anomalous parts of the urban road network. By analyzing spatial and temporal components of the most anomalous traffic patterns, sources of anomalies can be identified. Results were validated using the extracted domain knowledge from the Highway Capacity Manual. The anomaly detection model achieved a precision score of 92.88%. Therefore, this method finds its usages for safety experts in detecting potentially dangerous road segments, urban traffic planners, and routing applications.

anomaly detection ; tensor-based approach ; traffic data ; speed transition matrix ; Intelligent Transport Systems

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Podaci o izdanju

11 (24)

2021.

12017

17

objavljeno

2076-3417

10.3390/app112412017

Trošak objave rada u otvorenom pristupu

Povezanost rada

Informacijske i komunikacijske znanosti, Interdisciplinarne tehničke znanosti, Računarstvo, Tehnologija prometa i transport

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