How Much Is Too Much? Adaptive, Context-Aware Risk Detection in Naturalistic Driving
Amir Hossein Kalantari, Eleonora Papadimitriou, Arkady Zgonnikov, Amir Pooyan Afghari

TL;DR
This paper introduces an adaptive, context-aware risk detection framework for naturalistic driving data that improves accuracy and stability of safety alerts by addressing limitations of fixed thresholds and stationary behavior assumptions.
Contribution
The authors develop a unified framework that dynamically adapts risk labels and models over time and across drivers, enhancing real-time safety assessment in naturalistic driving studies.
Findings
XGBoost maintains performance under changing thresholds.
DNN achieves higher recall but with more variability.
Ensemble approach balances responsiveness and false alarms.
Abstract
Reliable risk identification based on driver behavior data underpins real-time safety feedback, fleet risk management, and evaluation of driver-assist systems. While naturalistic driving studies have become foundational for providing real-world driver behavior data, the existing frameworks for identifying risk based on such data have two fundamental limitations: (i) they rely on predefined time windows and fixed thresholds to disentangle risky and normal driving behavior, and (ii) they assume behavior is stationary across drivers and time, ignoring heterogeneity and temporal drift. In practice, these limitations can lead to timing errors and miscalibration in alerts, weak generalization to new drivers/routes/conditions, and higher false-alarm and miss rates, undermining driver trust and reducing safety intervention effectiveness. To address this gap, we propose a unified, context-aware…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Autonomous Vehicle Technology and Safety · Machine Learning and Data Classification
