Litcius/Paper detail

Anomaly based Incident Detection in Large Scale Smart Transportation Systems

Jaminur Islam, Jose Paolo Talusan, Shameek Bhattacharjee, Francis Tiausas, Sayyed Mohsen Vazirizade, Abhishek Dubey, Keiichi Yasumoto, Sajal K. Das

202212 citationsDOI

Abstract

Modern smart cities are focusing on smart transportation solutions to detect and mitigate the effects of various traffic incidents in the city. To materialize this, roadside units and ambient trans-portation sensors are being deployed to collect vehicular data that provides real-time traffic monitoring. In this paper, we first propose a real-time data-driven anomaly-based traffic incident detection framework for a city-scale smart transportation system. Specifically, we propose an incremental region growing approximation algorithm for optimal Spatio-temporal clustering of road segments and their data; such that road segments are strategically divided into highly correlated clusters. The highly correlated clusters enable identifying a Pythagorean Mean-based invariant as an anomaly detection metric that is highly stable under no incidents but shows a deviation in the presence of incidents. We learn the bounds of the invariants in a robust manner such that anomaly detection can generalize to unseen events, even when learning from real noisy data. We perform extensive experimental validation using mobility data collected from the City of Nashville, Tennessee, and prove that the method can detect incidents within each cluster in real-time.

Topics & Concepts

Anomaly detectionComputer scienceCluster analysisData miningSmart cityAnomaly (physics)Metric (unit)Intelligent transportation systemReal-time computingBig dataInternet of ThingsArtificial intelligenceComputer securityEngineeringTransport engineeringOperations managementPhysicsCondensed matter physicsAnomaly Detection Techniques and ApplicationsTraffic Prediction and Management TechniquesHuman Mobility and Location-Based Analysis