Data-Driven Semi-Supervised Machine Learning with Safety Indicators for Abnormal Driving Behavior Detection
Yongqi Dong, Lanxin Zhang, Haneen Farah, Arkady Zgonnikov, Bart van, Arem

TL;DR
This paper proposes a semi-supervised machine learning approach using safety indicators to effectively detect abnormal driving behaviors from large-scale real-world data, achieving high accuracy and F1-score.
Contribution
It introduces a hierarchical extreme learning machine model that incorporates event-level safety indicators as features, enhancing abnormal driving behavior detection with limited labeled data.
Findings
Achieved 99.58% accuracy in detection
F1-score of 0.9913 demonstrating high precision and recall
Safety indicators significantly improve detection performance
Abstract
Detecting abnormal driving behavior is critical for road traffic safety and the evaluation of drivers' behavior. With the advancement of machine learning (ML) algorithms and the accumulation of naturalistic driving data, many ML models have been adopted for abnormal driving behavior detection (also referred to in this paper as "anomalies"). Most existing ML-based detectors rely on (fully) supervised ML methods, which require substantial labeled data. However, ground truth labels are not always available in the real world, and labeling large amounts of data is tedious. Thus, there is a need to explore unsupervised or semi-supervised methods to make the anomaly detection process more feasible and efficient. To fill this research gap, this study analyzes large-scale real-world data revealing several abnormal driving behaviors (e.g., sudden acceleration, rapid lane-changing) and develops a…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Anomaly Detection Techniques and Applications · Fault Detection and Control Systems
