Abstract
Efficient automatic detection of incidents is a well-known problem in the field of transportation. Non-recurring incidents, such as traffic accidents, car breakdowns, and unusual congestion, can have a significant impact on journey times, safety, and the environment, leading to socio-economic consequences. To detect these traffic incidents, we propose a framework that leverages big data in transportation and data-driven Artificial Intelligence (AI)-based approaches. This paper presents the proposed methodology, conceptual and technical architecture in addition to the current implementation. Moreover, a comparison of data-driven approaches is presented, the findings from experiments to explore the task using real-world datasets are examined, while highlighting limitations of our work and identified challenges in the mobility sector and finally suggesting future directions.
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CITATION STYLE
Gkioka, G., Dominguez, M., Tympakianaki, A., & Mentzas, G. (2024). Ai-driven real-time incident detection for intelligent transportation systems. In Advances in Transdisciplinary Engineering (Vol. 50, pp. 56–68). IOS Press BV. https://doi.org/10.3233/ATDE240021
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