Submitted:
15 January 2025
Posted:
22 January 2025
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Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Datasets
2.1.1. DEAP Dataset
2.1.2. BDAT Dataset
2.2. Algorithmic Approach (Figure 1)
2.2.1. Pre-Processing
2.2.2. Feature Extraction
2.2.3. Feature Selection
2.2.4. Classification
2.2.5. Evaluation
3. Results
3.1. DEAP Model
3.1.1. Preprocessing
3.1.2. Feature Extraction
3.1.3. Feature Selection
3.1.4. Classification
3.1.5. Evaluation- DEAP Model
3.2. SMCI Model Adaptations

3.2.1. Preprocessing
3.2.2. Feature Extraction
3.2.3. Feature Selection
3.2.4. Classification
3.2.5. Evaluation-BDAT Model
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| DEAP dataset | BDAT dataset | |
| Stimuli | 40 Music Videos | 30 images selected from IAPS |
| Signals | PPG, GSR and RESP | PPG, GSR |
| Output | PAD | Emotion |
| Participants | 32 Typically Developing | 9 SMCI, 1 TDM |
| Title 1 | Features | PCA |
| PPG | 108 | 21 |
| GSR | 108 | 24 |
| RESP | 84 | 14 |
| TOTAL (individually) | 300 | 59 |
| ALL | 300 | 54 |
| Score | Pleasure | Arousal | Dominance | PAD Average | |
| PPG | Model | SVM-rbf | SVM-linear | SVM-rbf | |
| Accuracy | 21% | 21% | 23% | 21% | |
| GSR | Model | SVM-rbf | SVM-rbf | SVM-rbf | |
| Accuracy | 20% | 22% | 20% | 21% | |
| RESP | Model | SVM-poly | SVM-linear | Rand Forest | |
| Accuracy | 20% | 21% | 23% | 21% | |
| PPG, GSR & RESP | Model | SVM-rbf | SVM-poly | SVM-rbf | |
| Accuracy | 19% | 21% | 22% | 21% | |
| PPG & GSR | Model | SVM-rbf | SVM-rbf | SVM-rbf | |
| Accuracy | 20% | 22% | 26% | 23% | |
| Dimension Average | Accuracy | 20% | 21% | 24% | 22% |
|
# of Categories |
Scores | |||||
| Pleasure | Arousal | Dominance | ||||
| Model | Acc. | Model | Acc. | Model | Acc. | |
| 2 | SVM-rbf | 56% | Random Forest | 60% | SVM-rbf | 61% |
| 3 | SVM-rbf | 47% | SVM-rbf | 49% | SVM-rbf | 54% |
| 9 | SVM-rbf | 20% | SVM-rbf | 21% | SVM-rbf | 24% |
| DEAP model (level 8 wavelets, 60s duration) | SMCI model with changes (5 level wavelets, 12s duration) | |||
| Model | Accuracy | Model | Accuracy | |
| Pleasure | Random-Forest | 20% | SVM- rbf | 20% |
| Arousal | SVM- rbf | 21% | SVM- poly | 19% |
| Dominance | SVM- rbf | 22% | SVM- rbf | 22% |
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