Research on Channel Selection and Multi-Feature Fusion of EEG Signals for Mental Fatigue Detection
Abstract
:1. Introduction
2. Methods
2.1. Channel Selection Based on ReliefF
Algorithm 1. Relief algorithm |
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Algorithm 2. ReliefF algorithm |
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Equation (5), |
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2.2. Common Channel Selection Based on Weight Addition
2.3. Common Channel Selection Based on Weighted Classification Performance Using a Single Channel
2.4. Feature Fusion Based on Sparse Representation
2.4.1. Feature Extraction
2.4.2. Sparse Representation
2.4.3. Multi-Class Feature Fusion Based on K-SVD
3. Experimental Setup
3.1. Subject and Experiment Environment
3.2. 2-Back Task
3.3. Experimental Design and Procedures
- Step 1:
- The subject put on an electroencephalogram cap and applied conductive paste to sit on the experimental chair and prepare for the experiment.
- Step 2:
- The subject sat and filled in the Chalder fatigue scale.
- Step 3:
- The subject sat quietly on the experimental chair and EEG data were collected for 2 min.
- Step 4:
- The subject began the 2-back task training stage until the accuracy rate reached 0.8 or above.
- Step 5:
- The subject began the first round of 2-back task formal experiment, and the subject’s key response and response time were recorded for 25 min.
- Step 6:
- The subject rested for 5 min.
- Step 7:
- The subject began the second round of the 2-back task formal experiment, and the subject’s key response and response time were recorded for 25 min.
- Step 8:
- The subject sat quietly on the experimental chair and the subject’s EEG data were collected for 2 min.
- Step 9:
- Subject sat and filled in the Chalder fatigue scale.
- Step 10:
- The experiment ended.
4. Results and Discussion
4.1. 2-Back Task Result Analysis
4.2. Channel Selection Result Analysis
4.3. Feature Fusion Result Analysis
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Features | Feature Details |
---|---|
Frequency domain features | Power spectral density in the beta band (12–30 Hz) |
Power spectral density in the alpha band (8–12 Hz) | |
Power spectral density in the theta band (4–8 Hz) | |
Power spectral density in the delta band (0.5–4 Hz) | |
Time domain feature | Sample entropy |
Subject | Accuracy | Precision | F1 Score |
---|---|---|---|
Sub1 | 0.825 ± 0.01 | 0.842 ± 0.071 | 0.817 ± 0.079 |
Sub2 | 0.90 ± 0.04 | 0.834 ± 0.044 | 0.897 ± 0.1 |
Sub3 | 0.97 ± 0.005 | 0.962 ± 0.011 | 0.966 ± 0.04 |
Sub4 | 0.90 ± 0.02 | 0.891 ± 0.05 | 0.91 ± 0.04 |
Sub5 | 0.95 ± 0.10 | 0.925 ± 0.012 | 0.906 ± 0.083 |
Sub6 | 0.875 ± 0.02 | 0.84 ± 0.060 | 0.870 ± 0.08 |
Sub7 | 0.90 ± 0.013 | 0.858 ± 0.121 | 0.89 ± 0.113 |
Sub8 | 0.95 ± 0.025 | 0.971 ± 0.081 | 0.959 ± 0.004 |
Subject | Sample Entropy Feature | PSD (Delta Band) | PSD (Theta Band) | PSD (Alpha Band) | PSD (Beta Band) | Sparse Fusion Feature |
---|---|---|---|---|---|---|
Sub1 | 0.8 | 0.775 | 0.65 | 0.75 | 0.75 | 0.825 |
Sub2 | 0.9 | 0.725 | 0.775 | 0.725 | 0.8 | 0.9 |
Sub3 | 0.95 | 0.95 | 0.675 | 0.55 | 0.7 | 0.97 |
Sub4 | 0.775 | 0.875 | 0.85 | 0.825 | 0.775 | 0.9 |
Sub5 | 0.875 | 0.725 | 0.775 | 0.925 | 0.875 | 0.95 |
Sub6 | 0.85 | 0.575 | 0.875 | 0.6 | 0.8 | 0.875 |
Sub7 | 0.525 | 0.8 | 0.625 | 0.8 | 0.65 | 0.9 |
Sub8 | 0.925 | 0.675 | 0.65 | 0.775 | 0.85 | 0.95 |
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Liu, Q.; Liu, Y.; Chen, K.; Wang, L.; Li, Z.; Ai, Q.; Ma, L. Research on Channel Selection and Multi-Feature Fusion of EEG Signals for Mental Fatigue Detection. Entropy 2021, 23, 457. https://doi.org/10.3390/e23040457
Liu Q, Liu Y, Chen K, Wang L, Li Z, Ai Q, Ma L. Research on Channel Selection and Multi-Feature Fusion of EEG Signals for Mental Fatigue Detection. Entropy. 2021; 23(4):457. https://doi.org/10.3390/e23040457
Chicago/Turabian StyleLiu, Quan, Yang Liu, Kun Chen, Lei Wang, Zhilei Li, Qingsong Ai, and Li Ma. 2021. "Research on Channel Selection and Multi-Feature Fusion of EEG Signals for Mental Fatigue Detection" Entropy 23, no. 4: 457. https://doi.org/10.3390/e23040457
APA StyleLiu, Q., Liu, Y., Chen, K., Wang, L., Li, Z., Ai, Q., & Ma, L. (2021). Research on Channel Selection and Multi-Feature Fusion of EEG Signals for Mental Fatigue Detection. Entropy, 23(4), 457. https://doi.org/10.3390/e23040457