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Anomalous Trajectory Detection and Classification Based on Difference and Intersection Set Distance

Jingwei Wang, Yun Yuan, Tianle Ni, Yunlong Ma, Min Liu, Gaowei Xu, Weiming Shen

2020IEEE Transactions on Vehicular Technology58 citationsDOI

Abstract

Anomaly detection is an important issue in trajectory data mining. Various approaches have been proposed to address this issue. However, most previous studies focus only on outlier detection but rarely on pattern mining of anomalous trajectories. Mining patterns of anomalous trajectories can reveal the underlying mechanisms of these outliers. This paper studies four distinct patterns of anomalous trajectories, and proposes a method to detect and classify them. First, we present the difference and intersection set (DIS) distance metric to evaluate the similarity between any two trajectories. Based on this distance, we design an anomaly score function to quantify the differences between different types of anomalous trajectories and normal trajectories. We further propose an anomalous trajectory detection and classification (ATDC) method to find anomalies in different anomalous patterns. Finally, we evaluate the proposed ATDC method through extensive experiments on real cab trajectory data. The results show that the proposed approach outperforms existing methods by a significant margin.

Topics & Concepts

TrajectoryAnomaly detectionIntersection (aeronautics)OutlierMetric (unit)Computer sciencePattern recognition (psychology)Similarity (geometry)Set (abstract data type)Data miningAnomaly (physics)Margin (machine learning)Artificial intelligenceData setFocus (optics)Machine learningImage (mathematics)EngineeringCondensed matter physicsOperations managementPhysicsProgramming languageAstronomyOpticsAerospace engineeringAnomaly Detection Techniques and ApplicationsTime Series Analysis and ForecastingData Management and Algorithms