Analysis of Relationship between Electroencephalograms and Subjective Measurements for In-Vehicle Information System: A Preliminary Study
Abstract
:1. Introduction
2. Methods
2.1. Participants
2.2. Apparatus
2.3. Experimental Design and Task
2.4. Procedure
2.5. Measurements
2.6. Data Analysis
3. Results
3.1. Model
3.2. Task Completion Time
3.3. Subjective Questionnaire
4. Discussion
4.1. Performance-Related Psychophysiological Indices
4.2. Objective and Subjective Indicators
4.3. Qualitative Evaluation
4.4. Limitation
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Displays | Cluster Location | Axis of Display |
---|---|---|
Front–horizontal | Front side (monitor behind handle) | Horizontal |
Front–vertical | Front side (monitor behind handle) | Vertical |
Right–horizontal | Right side (centre fascia monitor) | Horizontal |
Right–vertical | Right side (centre fascia monitor) | Vertical |
Task | Function | Instruction |
---|---|---|
Task 1 | Radio | Play the FM 107.7 MHz channel on the radio. |
Task 2 | Save FM 107.7 as a pre-set and delete the saved channel FM 93.9. | |
Task 3 | Calling | Find Oh Kyung-ah’s mobile phone number and call. |
Task 4 | Vehicle status | Set the driver’s seat to 23° and the assistant’s seat to 18°. |
Task 5 | Vehicle status | Set the air volume to the strongest setting. |
Task 6 | Calling | Find Oh Kyung-ah in the integrated favourites. |
Task 7 | Vehicle Status | Close the door of the passenger seat. |
Task 8 | Navigation | Set Jamsil Baseball Stadium as your destination. |
Task 9 | Change the centre of cluster screen to navigation (for cluster). Change cluster screen in AVN to driving assist state (for clusterless). | |
Task 10 | Calling | Reject incoming calls on AVN screen. |
Task 11 | Advanced smart cruise control (ASCC) | Set the ASCC to speed 80 and distance between cars in 2 steps on the AVN screen. |
Task 12 | Change the centre screen from the cluster screen to the ASCC screen (for cluster). | |
Task 13 | Tyre pressure monitoring system (TPMS) | Check TPMS through AVN screen. |
Task 14 | Check the TPMS on the cluster screen (for cluster). |
Index | Definition |
---|---|
Stress | Measurement of the level of difficulty with the current challenge |
Engagement | Level of attention and concentration in the moment |
Interest | Degree of attraction to the current stimuli, environment, or activity |
Relaxation | Measurement of the ability to switch off from intense concentration |
Questionnaire | Questionnaire Item | Definition | Reference |
---|---|---|---|
NASA-TLX | Mental demand | Level of mental and cognitive burden | Hart and Staveland [33] |
Physical demand | Degree to which physical activity is required | ||
Temporal demand | Degree to which time pressure is felt | ||
Effort | Level of effort made to achieve the tasks successfully | ||
Performance | The extent to which the task result was failure or success | ||
Frustration | Comprehensive degree of insecurity, frustration, and anger in tasks | ||
Overall workload | Overall workload from driving and vehicle-related tasks | ||
RCS | Overall clutter | Degree to which information presented is generally distracting and complex | Kaber et al. [34] |
Variability | How often information is displayed and how dynamic it is | ||
Consistency | Degree of inconsistency in how information is presented | ||
Colourfulness | How many colours are used to display information | ||
DALI | Visual demand | Visual demand for driving activities | Pauzié [35] |
Auditory demand | Audible demands for driving activities | ||
Interference | Degree to which tasks that are not related to driving (e.g., pressing a button) are disturbed | ||
DX | Hedonic quality | Degree to which pleasure is obtained from the in-vehicle interface | Schwarz and Fastenmeier [36] Chi and Dewi [37] Francois et al. [38] |
Pragmatic quality | Degree to which the in-vehicle interface is practical | ||
Familiarity | Degree to which the in-vehicle interface is familiar for performing the task | ||
Learnability | Degree to which it is easy to learn to familiarize yourself with the vehicle’s interface | ||
Memorability | Degree to which the vehicle interface is intuitively easy to understand | ||
Overall usability | Degree to which the vehicle interface is easy to use overall | ||
Overall satisfaction | Overall satisfaction with the vehicle interface |
Indices | Adj. R2 | Detailed Model |
---|---|---|
Stress | 0.78 | −0.04 + 0.04 × (Colourfulness) − 0.01 × (Hedonic quality) |
Engagement | 0.91 | 0.71 − 0.02 × (Hedonic quality) + 0.01 × (Pragmatic quality) + 0.01 × (Auditory demand) + 0.01 × (Memorability) |
Interest | 0.14 | 1.01 + 0.002 × (Hedonic quality) |
Relaxation | 0.64 | −0.95 + 0.04 × (Colourfulness) + 0.03 × (Physical demand) − 0.02 × (Effort) |
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Kim, N.; Choe, M.; Park, J.; Park, J.; Kim, H.K.; Kim, J.; Hussain, M.; Jung, S. Analysis of Relationship between Electroencephalograms and Subjective Measurements for In-Vehicle Information System: A Preliminary Study. Int. J. Environ. Res. Public Health 2021, 18, 12173. https://doi.org/10.3390/ijerph182212173
Kim N, Choe M, Park J, Park J, Kim HK, Kim J, Hussain M, Jung S. Analysis of Relationship between Electroencephalograms and Subjective Measurements for In-Vehicle Information System: A Preliminary Study. International Journal of Environmental Research and Public Health. 2021; 18(22):12173. https://doi.org/10.3390/ijerph182212173
Chicago/Turabian StyleKim, Nahyeong, Mungyeong Choe, Jaehyun Park, Jungchul Park, Hyun K. Kim, Jungyoon Kim, Muhammad Hussain, and Suhwan Jung. 2021. "Analysis of Relationship between Electroencephalograms and Subjective Measurements for In-Vehicle Information System: A Preliminary Study" International Journal of Environmental Research and Public Health 18, no. 22: 12173. https://doi.org/10.3390/ijerph182212173
APA StyleKim, N., Choe, M., Park, J., Park, J., Kim, H. K., Kim, J., Hussain, M., & Jung, S. (2021). Analysis of Relationship between Electroencephalograms and Subjective Measurements for In-Vehicle Information System: A Preliminary Study. International Journal of Environmental Research and Public Health, 18(22), 12173. https://doi.org/10.3390/ijerph182212173