Litcius/Paper detail

Spatial-Temporal-Cost Combination Based Taxi Driving Fraud Detection for Collaborative Internet of Vehicles

Xiangjie Kong, Bing Zhu, Guojiang Shen, Tewabe Chekole Workneh, Zhanhao Ji, Chen Yang, Zhi Liu

2021IEEE Transactions on Industrial Informatics35 citationsDOI

Abstract

Vehicle-to-vehicle interaction and collaboration can provide us with a large number of mobile traffic trajectories that can be used to analyze driving behavior. In this article, we propose a spatio-temporal cost combination based framework for taxi driving fraud detection. First, the point of interest where taxis interact and collaborate with collaborative Internet of Vehicles participants is identified, and a baseline trajectory model is built to determine the typical trajectory distribution. Second, a statistical model is used to calculate the travel distribution, travel time, and travel cost. At the same time, the taxi trajectory points are converted into evolving graphs to detect the abnormality of the local road segment. Then, we can analyze the causes of outlier trajectories combined with the perception of abnormal road environments. Finally, the trajectories of real taxis were used to evaluate outliers, which proves the effectiveness and efficiency of the method.

Topics & Concepts

TaxisComputer scienceTrajectoryOutlierThe InternetAnomaly detectionBaseline (sea)Real-time computingData miningTransport engineeringArtificial intelligenceEngineeringPhysicsGeologyOceanographyWorld Wide WebAstronomyAnomaly Detection Techniques and ApplicationsVideo Surveillance and Tracking MethodsTraffic Prediction and Management Techniques