| Literature DB >> 30691180 |
Naveen Masood1, Humera Farooq2.
Abstract
Most electroencephalography (EEG) based emotion recognition systems make use of videos and images as stimuli. Few used sounds, and even fewer studies were found involving self-induced emotions. Furthermore, most of the studies rely on single stimuli to evoke emotions. The question of "whether different stimuli for same emotion elicitation generate any subject-independent correlations" remains unanswered. This paper introduces a dual modality based emotion elicitation paradigm to investigate if emotions can be classified induced with different stimuli. A method has been proposed based on common spatial pattern (CSP) and linear discriminant analysis (LDA) to analyze human brain signals for fear emotions evoked with two different stimuli. Self-induced emotional imagery is one of the considered stimuli, while audio/video clips are used as the other stimuli. The method extracts features from the CSP algorithm and LDA performs classification. To investigate associated EEG correlations, a spectral analysis was performed. To further improve the performance, CSP was compared with other regularized techniques. Critical EEG channels are identified based on spatial filter weights. To the best of our knowledge, our work provides the first contribution for the assessment of EEG correlations in the case of self versus video induced emotions captured with a commercial grade EEG device.Entities:
Keywords: brain computer interface; classification; common spatial pattern (CSP); electrode reduction; electroencephalography (EEG); emotions
Mesh:
Year: 2019 PMID: 30691180 PMCID: PMC6387207 DOI: 10.3390/s19030522
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Electrode placement for Emotiv EPOC headset.
List of videos shown to the participants.
| S. No. | Videos | Emotional State | Video Length (s) |
|---|---|---|---|
| 1. | Lights out movie trailer | Fear | 180 |
| 2. | Best Vacations: Jumping | Pleasant | 30 |
| 3. | Video clip from Insidious movie | Fear | 120 |
| 4. | Caught red-handed | Pleasant | 30 |
| 5. | Conjuring official trailer | Fear | 125 |
| 6. | Stunning China-UNESCO World Heritage | Pleasant | 30 |
| 7. | Die in Disaster Movies | Fear | 145 |
| 8. | Tourism Sites In Pakistan | Pleasant | 30 |
| 9. | Scene from The Eye-Horror movie | Fear | 120 |
| 10. | Berlin City Tour | Pleasant | 30 |
| 11. | Snakes catcher in Indian forest | Fear | 80 |
| 12. | BBC nature documentary 2016 | Pleasant | 30 |
| 13. | Female Restroom-Horror clip | Fear | 180 |
| 14. | Nat Geo Wild HD Ocean of Giants | Pleasant | 30 |
| 15. | Frightening Creepy Clown | Fear | 130 |
| 16. | 10-month-old babies | Pleasant | 30 |
| 17. | Scene from The Conjuring 2 | Fear | 120 |
| 18. | Roller Coaster & Candy Coaster | Pleasant | 30 |
| 19. | Fear of Snakes | Fear | 125 |
| 20. | Army Man surprises his 8-year-old daughter | Pleasant | 30 |
Figure 2Block diagram of the experiment. EEG—electroencephalography.
Figure 3Methodology for data analysis.
Classification accuracies for each subject using common spatial patterns (CSP) for all considered frequency bands.
| Subjects | Delta | Theta | Alpha | Beta | Low Gamma | High Gamma | (1–100 Hz) |
|---|---|---|---|---|---|---|---|
| S1 | 50.70 | 66.35 | 62.09 | 72.56 | 70.16 |
| 65.88 |
| S2 | 53.70 | 59.26 | 55.56 | 70.37 |
| 66.67 | 66.67 |
| S3 | 64.81 | 57.41 | 51.85 | 68.52 | 64.41 |
| 64.41 |
| S4 | 62.96 | 59.26 | 59.32 |
| 65.00 | 69.64 | 69.64 |
| S5 | 58.93 | 53.70 | 64.29 |
| 66.07 | 70.81 | 64.81 |
| S6 | 53.70 | 55.36 | 61.11 | 61.11 |
| 70.91 | 70.91 |
| S7 | 65.45 | 53.70 | 56.36 | 61.82 | 63.64 |
|
|
| S8 | 57.50 | 62.96 | 55.56 | 61.11 | 73.81 |
| 71.00 |
| S9 | 47.50 | 53.00 | 58.40 | 78.19 | 74.81 |
| 59.40 |
| S10 | 53.56 | 61.22 | 65.29 | 56.12 | 57.14 | 58.18 |
|
| S11 | 45.00 | 51.50 | 60.00 |
| 63.00 | 57.50 | 61.00 |
| S12 | 50.39 | 59.04 | 63.82 | 71.80 | 70.35 |
| 64.42 |
| S13 | 42.39 | 58.07 | 58.53 | 70.54 | 66.84 |
| 67.34 |
| S14 | 60.00 | 82.22 | 71.11 | 75.56 | 93.33 |
| 87.41 |
| S15 | 56.31 | 68.46 | 74.27 |
| 73.31 | 73.80 | 70.89 |
|
| 54.86 | 60.10 | 61.17 | 68.93 | 69.61 |
| 68.38 |
Mean classification accuracies using conventional and regularized CSP algorithms for all the considered frequency bands. CCSP—composite CSP; TR_CSP—CSP with Tikhonov regularization; WTR_CSP—CSP with weighted Tikhonov regularization; DL_CSP—CSP with diagonal loading using cross validation.
| Algorithm/Frequency Band | CSP | CCSP1 | CCSP2 | TR_CSP | WTR_CSP | DL_CSP | DL_CSP_auto |
|---|---|---|---|---|---|---|---|
| (1–3 Hz) | 54.86 | 65.00 | 63.93 | 52.54 | 53.51 | 49.49 | 51.62 |
| (4–7 Hz) | 60.10 | 65.85 | 66.30 | 61.30 | 62.05 | 60.91 | 60.52 |
| (8–13 Hz) | 61.17 | 64.22 | 63.77 | 60.32 | 59.27 | 59.46 | 59.79 |
| (14–30 Hz) | 68.93 |
|
| 69.24 | 69.05 | 66.76 | 68.08 |
| (31–50 Hz) | 69.61 | 72.49 | 72.19 | 69.48 | 70.19 | 69.91 | 68.77 |
| (50–100 Hz) | 72.74 |
|
| 72.06 | 72.86 | 72.20 | 66.28 |
Figure 4Box plot for classification accuracies with respect to frequency bands as obtained from Table 3. + symbol shows the outliers, while red line represents the median values.
Figure 5Box plot for classification accuracies with respect to different feature extraction techniques as obtained from Table 3. + symbol shows the outliers, while red line represents the median values. CCSP—composite CSP; TR_CSP—CSP with Tikhonov regularization; WTR_CSP—CSP with weighted Tikhonov regularization; DL_CSP—CSP with diagonal loading using cross validation.
Figure 6Methodology to find the reduced number of electroencephalography (EEG) channels based on CSP filter weights [50].
Figure 7Specification of eight channels’ configurations for each subject.
Figure 8Comparison of mean and maximum classification accuracies achieved from subject-specific configuration of 8 and 14 electrodes, respectively.
Frequency of channels appearance for each subject based on spatial filter weights.
| Subjects | AF3 | F7 | F3 | FC5 | T7 | P7 | O1 | O2 | P8 | T8 | FC6 | F4 | F8 | AF4 |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| S1 | √ | √ | √ | √ | √ | √ | √ | √ | ||||||
| S2 | √ | √ | √ | √ | √ | √ | √ | √ | ||||||
| S3 | √ | √ | √ | √ | √ | √ | √ | √ | ||||||
| S4 | √ | √ | √ | √ | √ | √ | √ | √ | ||||||
| S5 | √ | √ | √ | √ | √ | √ | √ | √ | ||||||
| S6 | √ | √ | √ | √ | √ | √ | √ | √ | ||||||
| S7 | √ | √ | √ | √ | √ | √ | √ | √ | √ | |||||
| S8 | √ | √ | √ | √ | √ | √ | √ | √ | ||||||
| S9 | √ | √ | √ | √ | √ | √ | √ | √ | ||||||
| S10 | √ | √ | √ | √ | √ | √ | √ | √ | ||||||
| S11 | √ | √ | √ | √ | √ | √ | √ | |||||||
| S12 | √ | √ | √ | √ | √ | √ | √ | √ | √ | |||||
| S13 | √ | √ | √ | √ | √ | √ | √ | √ | ||||||
| S14 | √ | √ | √ | √ | √ | √ | √ | √ | ||||||
| S15 | √ | √ | √ | √ | √ | √ | √ | |||||||
| Frequency for appearance | 12 | 8 | 9 | 4 | 11 | 11 | 9 | 6 | 9 | 6 | 6 | 12 | 8 | 8 |
Mean accuracies over varying number of electroencephalography (EEG) channels.
| No. of Electrodes in Selected Configuration | Possible Configurations | Mean Accuracy Achieved |
|---|---|---|
| 6 | AF3 F4 T7 P7 F3 O1 | 64.49 |
| AF3 F4 T7 P7 F3 P8 | 70.35 | |
| AF3 F4 T7 P7 O1 P8 | 66.86 | |
| 7 | AF3 F4 T7 P7 F3 O1 P8 | 65.01 |
| 8 | AF3 F4 T7 P7 F3 O1 P8 F8 | 69.94 |
| AF3 F4 T7 P7 F3 O1 P8 AF4 |
| |
| AF3 F4 T7 P7 F3 O1 P8 F7 | 71.67 | |
| 9 | AF3 F4 T7 P7 F3 O1 P8 F8 F7 |
|
| AF3 F4 T7 P7 F3 O1 P8 F8 AF4 | 67.92 | |
| AF3 F4 T7 P7 F3 O1 P8 F7 AF4 | 71.15 |
List of studies using EEG signals to perform emotion recognition and other tasks. SVM—support vector machine; LDA—linear discriminant analysis.
| Studies/Year | Type of Study (Emotion Recognition/Others) | Classifier | EEG Device with Total Number of Electrodes | Classification Performance | Relevant Frequency Band/Brain Regions |
|---|---|---|---|---|---|
| Zhuang et al. [ | Self-induced emotion recognition (joy, neutrality, sadness, disgust, anger, and fear) | SVM | g.HIamp System with 62 electrodes | 54.52% | High frequency rhythm from electrodes distributed in bilateral temporal, prefrontal, and occipital lobes produced outstanding performance. |
| Jatupaiboon et al. [ | Emotion recognition | SVM | Emotiv (14 electrodes (7 pairs)) | With all channels: 85.41% | Gamma band |
| Zhang et al. [ | four emotional states (joy, fear, sadness, and relaxation) | SVM | 32 | Originally 32 channels | It can be found that the high frequency bands (beta, gamma) play a more important role in emotion processing. |
| Zheng et al. [ | positive, neutral, and negative | kNN, logistic regression, SVM, and deep belief networks (DBNs) | ESI Neuroscan with 62 channels | With all 62 electrodes, DE features and SVM classifier obtained accuracy of 83.99% | Beta and gamma bands |
| Kothe et al. [ | Self-induced emotion: positive vs. negative | Logistic Regression | Bio Semi 250 gel based 250 electrodes | 71.3% | - |
| Chanel et al. [ | Memory recall: | LDA, Linear SVM, Prob. Linear SVM, RVM | Bio Semi Active II System with 64 electrodes | 63% | - |
| Lacoviello et al. [ | self-induced emotions: disgust vs. relax | SVM | EnobioNE 8 channels | With T8 channel only accuracy above 90% | - |
| Li and Lu [ | Happiness vs. sadness | Linear SVM | 62 channel | 93.5% | Gamma Band (30–100 Hz) |
| Wang et al. [ | Arithmetic mental task | SVM | 14 Emotiv EPOC | 97.14% with 14 electrodes. | - |
| Author’s work | Fear emotion recognition: self- vs. video-induced | LDA | 14 | 76.97 with all 14 channels | High gamma and beta band |