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This paper examined a steering behavior based fatigue monitoring system. The advantages of using steering behavior for detecting fatigue are that these systems measure continuously, cheaply, non-intrusively, and robustly even under extremely demanding environmental conditions. The expected fatigue induced changes in steering behavior are a pattern of slow drifting and fast corrective counter steering. Using advanced signal processing procedures for feature extraction, we computed 3 feature set in the time, frequency and state space domain (a total number of 1251 features) to capture fatigue impaired steering patterns. Each feature set was separately fed into 5 machine learning methods (e.g. Support Vector Machine, K-Nearest Neighbor). The outputs of each single classifier were combined to an ensemble classification value. Finally we combined the ensemble values of 3 feature subsets to a of meta-ensemble classification value. To validate the steering behavior analysis, driving samples are taken from a driving simulator during a sleep deprivation study (N=12). We yielded a recognition rate of 86.1% in classifying slight from strong fatigue.
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Jarek Krajewski
Institute for Experimental Psychophysiology (Germany)
David Sommer
Aschaffenburg University of Applied Sciences
U. Trutschel
Technische Universität Ilmenau
University of Wuppertal
Circadian (United States)
Caterpillar (United States)
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Krajewski et al. (Tue,) studied this question.
synapsesocial.com/papers/6a223443965ac14388495e66 — DOI: https://doi.org/10.17077/drivingassessment.1311
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