Multimodal Brain-Computer Interface for In-Vehicle Driver Cognitive Load
Measurement: Dataset and Baselines
- URL: http://arxiv.org/abs/2304.04273v2
- Date: Thu, 21 Dec 2023 04:39:59 GMT
- Title: Multimodal Brain-Computer Interface for In-Vehicle Driver Cognitive Load
Measurement: Dataset and Baselines
- Authors: Prithila Angkan, Behnam Behinaein, Zunayed Mahmud, Anubhav Bhatti,
Dirk Rodenburg, Paul Hungler and Ali Etemad
- Abstract summary: We introduce a novel driver cognitive load assessment dataset, CL-Drive.
The data was collected from 21 subjects while driving in an immersive vehicle simulator.
Each driver reported their subjective cognitive load every 10 seconds throughout the experiment.
- Score: 20.22894459715378
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Through this paper, we introduce a novel driver cognitive load assessment
dataset, CL-Drive, which contains Electroencephalogram (EEG) signals along with
other physiological signals such as Electrocardiography (ECG) and Electrodermal
Activity (EDA) as well as eye tracking data. The data was collected from 21
subjects while driving in an immersive vehicle simulator, in various driving
conditions, to induce different levels of cognitive load in the subjects. The
tasks consisted of 9 complexity levels for 3 minutes each. Each driver reported
their subjective cognitive load every 10 seconds throughout the experiment. The
dataset contains the subjective cognitive load recorded as ground truth. In
this paper, we also provide benchmark classification results for different
machine learning and deep learning models for both binary and ternary label
distributions. We followed 2 evaluation criteria namely 10-fold and
leave-one-subject-out (LOSO). We have trained our models on both hand-crafted
features as well as on raw data.
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