Driver Maneuver Detection and Analysis using Time Series Segmentation and Classification
Armstrong Aboah, Yaw Adu-Gyamfi, Senem Velipasalar Gursoy, Jennifer, Merickel, Matt Rizzo, Anuj Sharma

TL;DR
This paper presents an end-to-end approach combining time series segmentation and machine learning classification to accurately detect and analyze vehicle maneuvers from continuous telemetry data in naturalistic driving conditions.
Contribution
It introduces an Energy Maximization Algorithm for event segmentation and evaluates multiple ML models, demonstrating high accuracy and transferability across datasets.
Findings
Event durations closely match actual maneuvers.
Deep learning models achieved over 98% accuracy.
Segmentation-classification pipeline improves detection performance.
Abstract
The current paper implements a methodology for automatically detecting vehicle maneuvers from vehicle telemetry data under naturalistic driving settings. Previous approaches have treated vehicle maneuver detection as a classification problem, although both time series segmentation and classification are required since input telemetry data is continuous. Our objective is to develop an end-to-end pipeline for frame-by-frame annotation of naturalistic driving studies videos into various driving events including stop and lane keeping events, lane changes, left-right turning movements, and horizontal curve maneuvers. To address the time series segmentation problem, the study developed an Energy Maximization Algorithm (EMA) capable of extracting driving events of varying durations and frequencies from continuous signal data. To reduce overfitting and false alarm rates, heuristic algorithms…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Time Series Analysis and Forecasting · Sleep and Work-Related Fatigue
