Research Article
EEG Feature Extraction and Data Augmentation in Emotion Recognition
Table 7
Comparison of proposed work with similar work on SVM classifier.
| Model | Features | NO. Augmented data | Classification type | Mean accuracy | STD | Arousal | Valence | M.Acc | STD | M.Acc | STD |
| Proposed model | 344 extracted features | 0 | Binary | — | — | 64.3% | % 2.3 | 60.1% | % 5.2 | Proposed model | 344 extracted features | 2 real data | Binary | — | — | 68.2% | %4.7 | 64.3% | %4.8 | Proposed model | 344 extracted features | Real data + 5000 | Binary | — | — | 62.4% | % 3.8 | 59.6% | % 3.1 | [1] | DE | 0 | Categorical | 45.4% | 8.2% | — | — | — | — | [1] | DE | 5000 | Categorical | 48.9% | 8.4% | — | — | — | — | [1] | PSD | 0 | Categorical | 42.7% | 9.6% | — | — | — | — | [1] | PSD | 5000 | Categorical | 45.0% | 8.9% | — | — | — | — |
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