Modulating Driver Alertness via Ambient Olfactory Stimulation: A Wearable Electroencephalography Study
Abstract
:1. Introduction
2. Materials and Methods
2.1. Participant Recruitment and Scheduling
2.2. Experimental Procedure
2.3. EEG Signal Recording and Pre-Processing
2.4. Feature Extraction—Brain Metrics
2.5. Statistical Analysis
2.6. Supervised Learning
2.6.1. k-Nearest Neighbors
2.6.2. Support Vectors Machine (SVM) with Linear Kernel
2.6.3. SVM with Radial Basis Function (RBF) Kernel
2.6.4. Extreme Gradient Boosting (XGBoost)
2.6.5. Cross-Validation and Hyperparameter Tuning
3. Results
3.1. Behavioral and Self-Reported Measures
3.1.1. Questionnaires
3.1.2. Behavioral Data—Reaction Times
3.2. EEG Metrics—Significant Differences
3.3. Classification Results
3.4. RT versus Brain Metrics—Correlational Analysis
4. Discussion
Limitations and Future Directions
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
AAR | Automatic Artifact Rejection |
ACC | Adaptive cruise control |
EEG | Electroencephalography |
KSS | Karolinska Sleepiness Scale |
NASA TLX | NASA Task Load Index |
PSD | Power spectral density |
SVM | Support Vector Machine |
RBF | Radial basis function kernel |
kNN | k Nearest Neighbors |
RT | Reaction Time |
XGBoost | Extreme Gradient Boosting |
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Graph Metrics | Mathematical Formula |
---|---|
Nodal Degree () | = |
Nodal Betweenness () | = |
Nodal Efficiency () | = |
Nodal Clustering Coefficient () | = |
EEG Metric/ Channel Location | Delta Band [1–4] Hz | Theta Band [4–8] Hz | Alpha Band [4–8] Hz | Beta Band [13–30] Hz | Gamma Band [30–40] Hz |
---|---|---|---|---|---|
Nodal Degree | Fp1, Fp2, C3, Cz, P8, T4 | Fp2, F7, F8, F4, P7, T3 | F3, C4 | Fp1, F4, P8, Pz, P4 | P7 |
Nodal Betweenness | Fp1, Cz, C4, P8, T3 | Fp2, F7 | F3, C4, P8, Pz, O1 | Fp1, P8, Pz, P4 | Fp1, C4, P7 |
Nodal Efficiency | Fp1, Fp2, F8, C3, Cz, P8, T4 | F7, F8, F4, Cz, P7, T3 | F3 | Fp1, F4, Pz, P4 | F8, Pz, P4, O2 |
Nodal Clustering Coefficient | F7, C3, Pz, P3 | Cz | C3, P3 | Fp2, C3 | F3 |
Power Spectral Density | F3, F8, P4, O2, T4 | F3, F8, P4, O1, T4 | Fp1, F7, F3, F8, Fz, F4, C3, Pz, P4, T4 | Fp1, F7, F3, F8, Fz, F4, Cz, C4, P4 | F7, F3, Fz, F4, C3, Cz, C4, P3 |
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Share and Cite
Jiang, M.; Chaichanasittikarn, O.; Seet, M.; Ng, D.; Vyas, R.; Saini, G.; Dragomir, A. Modulating Driver Alertness via Ambient Olfactory Stimulation: A Wearable Electroencephalography Study. Sensors 2024, 24, 1203. https://doi.org/10.3390/s24041203
Jiang M, Chaichanasittikarn O, Seet M, Ng D, Vyas R, Saini G, Dragomir A. Modulating Driver Alertness via Ambient Olfactory Stimulation: A Wearable Electroencephalography Study. Sensors. 2024; 24(4):1203. https://doi.org/10.3390/s24041203
Chicago/Turabian StyleJiang, Mengting, Oranatt Chaichanasittikarn, Manuel Seet, Desmond Ng, Rahul Vyas, Gaurav Saini, and Andrei Dragomir. 2024. "Modulating Driver Alertness via Ambient Olfactory Stimulation: A Wearable Electroencephalography Study" Sensors 24, no. 4: 1203. https://doi.org/10.3390/s24041203
APA StyleJiang, M., Chaichanasittikarn, O., Seet, M., Ng, D., Vyas, R., Saini, G., & Dragomir, A. (2024). Modulating Driver Alertness via Ambient Olfactory Stimulation: A Wearable Electroencephalography Study. Sensors, 24(4), 1203. https://doi.org/10.3390/s24041203