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Journal Article

Citation

Ahn D, Park H, Shin K, Park T. Sensors (Basel) 2019; 19(11): s19112643.

Affiliation

Department of Robotics Engineering, Hanyang University, 55 Hanyang-Daehakro, Ansan-si 15588, Gyeonggi-do, Korea. taejoon@hanyang.ac.kr.

Copyright

(Copyright © 2019, MDPI: Multidisciplinary Digital Publishing Institute)

DOI

10.3390/s19112643

PMID

31212672

Abstract

Distracted driving jeopardizes the safety of the driver and others. Numerous solutions have been proposed to prevent distracted driving, but the number of related accidents has not decreased. Such a deficiency comes from fragile system designs where drivers are detected exploiting sensory features from strictly controlled vehicle-riding actions and unreliable driving events. We propose a system called ADDICT (Accurate Driver Detection exploiting Invariant Characteristics of smarTphone sensors), which identifies the driver utilizing the inconsistency between gyroscope and magnetometer dynamics and the interplay between electromagnetic field emissions and engine startup vibrations. These features are invariantly observable regardless of smartphone positions and vehicle-riding actions. To evaluate the feasibility of ADDICT, we conducted extensive experiments with four participants and three different vehicles by varying vehicle-riding scenarios. Our evaluation results demonstrated that ADDICT identifies the driver's smartphone with 89.1% average accuracy for all scenarios and >85% under the extreme scenario, at a marginal cost of battery consumption.


Language: en

Keywords

built-in smartphone sensors; distracted driving; driver detection; driving while distracted; invariant sensory characteristics

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