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Traffic Anomaly Detection: Exploiting Temporal Positioning of Flow-Density Samples

Iman Taheri Sarteshnizi, Saeed Asadi Bagloee, Majid Sarvi, Neema Nassir

2023IEEE Transactions on Intelligent Transportation Systems15 citationsDOI

Abstract

It is of paramount importance to detect traffic data anomalies in a real-time manner as it helps efficient traffic control and management. Several unsupervised anomaly detection algorithms are proposed previously in the literature; however, lack of proper ground truth labels for traffic data has been always a substantial barrier to deploy and evaluate them. In this paper, we introduce a concept named Temporal Positioning of Flow-Density Samples (TP-FDS) that can be used by domain experts for fast and reliable traffic data labeling. We mathematically show that deviations in two-dimensional TP-FDS completely reflect point and subsequence anomalies previously defined in the literature of time series data. Furthermore, benefiting from this concept, we propose a novel anomaly detection framework with the help of Fast Angle Based Outlier Detection (Fast-ABOD) to be used for traffic data. Extensive data labeling experiments are conducted with the opinions of 20 different experts. Implementation of several machine learning algorithms, like KNN, OC-SVM, iForest, and LOF, is also adapted with two different setups of hyper-parameters to be used in the proposed framework. Results indicate that our framework integrated with Fast-ABOD is able to detect anomalies in traffic data better than other machine learning and state-of-the-art deep learning algorithms with more than 72% and 96% of F1 score and AUC.

Topics & Concepts

Anomaly detectionComputer scienceOutlierData miningArtificial intelligenceSubsequenceSupport vector machineTime seriesDomain (mathematical analysis)Machine learningPattern recognition (psychology)MathematicsBounded functionMathematical analysisAnomaly Detection Techniques and ApplicationsTraffic Prediction and Management TechniquesNetwork Security and Intrusion Detection
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