A multimodal dataset for various forms of distracted driving

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作者
Salah Taamneh
Panagiotis Tsiamyrtzis
Malcolm Dcosta
Pradeep Buddharaju
Ashik Khatri
Michael Manser
Thomas Ferris
Robert Wunderlich
Ioannis Pavlidis
机构
[1] Computational Physiology Laboratory,Department of Statistics
[2] University of Houston,Department of Mathematics and Computer Science
[3] Athens University of Economics and Business,undefined
[4] Elizabeth City State University,undefined
[5] Computer Science and Computer Information Systems,undefined
[6] University of Houston Clear Lake,undefined
[7] Texas A&M Transportation Institute,undefined
[8] Texas A&M University,undefined
[9] Industrial and Systems Engineering,undefined
[10] Texas A&M University,undefined
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We describe a multimodal dataset acquired in a controlled experiment on a driving simulator. The set includes data for n=68 volunteers that drove the same highway under four different conditions: No distraction, cognitive distraction, emotional distraction, and sensorimotor distraction. The experiment closed with a special driving session, where all subjects experienced a startle stimulus in the form of unintended acceleration—half of them under a mixed distraction, and the other half in the absence of a distraction. During the experimental drives key response variables and several explanatory variables were continuously recorded. The response variables included speed, acceleration, brake force, steering, and lane position signals, while the explanatory variables included perinasal electrodermal activity (EDA), palm EDA, heart rate, breathing rate, and facial expression signals; biographical and psychometric covariates as well as eye tracking data were also obtained. This dataset enables research into driving behaviors under neatly abstracted distracting stressors, which account for many car crashes. The set can also be used in physiological channel benchmarking and multispectral face recognition.
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