A multimodal dataset for various forms of distracted driving
نویسندگان
چکیده
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.
منابع مشابه
Automatic segmentation of glioma tumors from BraTS 2018 challenge dataset using a 2D U-Net network
Background: Glioma is the most common primary brain tumor, and early detection of tumors is important in the treatment planning for the patient. The precise segmentation of the tumor and intratumoral areas on the MRI by a radiologist is the first step in the diagnosis, which, in addition to the consuming time, can also receive different diagnoses from different physicians. The aim of this study...
متن کاملDriver Mirror-Checking Action Detection Using Multi-Modal Signals
Studies on driver distraction aim to identify features extracted from various sensory signals that can be used to distinguish between normal and distracted driving behaviors. A major challenge in these studies is to determine whether the observed behaviors are associated with the primary driving tasks (checking mirrors, monitoring speed, changing lines) or secondary tasks that deviate the atten...
متن کاملImpact of Distracted Driving on Traffic Flow Parameters
Studies have documented a link between distracted driving and diminished safety; however, an association between distracted driving and traffic congestion has not been investigated in depth. The present study examined the behavior of teens and young adults operating a driving simulator while engaged in various distractions (i.e., cell phone, texting, and undistracted) and driving conditions (i....
متن کاملAssessment of driver’s distraction using perceptual evaluations, self assessments and multimodal feature analysis
Developing feedback systems that can detect the attention level of the driver can play a key role in preventing accidents by alerting the driver about possible hazardous situations. Monitoring driver’s distraction is an important research problem, especially with new forms of technology that are made available to drivers, which can interfere with the primary driving task. An important question ...
متن کاملمبادرت رانندگان به تکلیف ثانویه خطرساز در راههای درونشهری مشهد
Alonso, F., Esteban, C., Useche, S.A. and Faus, M., 2017. Smoking while driving: Frequency, motives, perceived risk and punishment. World journal of preventive medicine, 5(1), pp.1-9. Alosco, M. L., Spitznagel, M. B., Fischer, K. H., Miller, L.A., Pillai, V., Hughes, J. and Gunstad, J., 2012. Both texting and eating are associated with impaired simulated driving performance. Traffic injury pre...
متن کامل