EEG-Based Multi-Modal Emotion Recognition using Bag of Deep Features: An Optimal Feature Selection Approach
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Yasar Amin | MuhibUr Rahman | Fawad | Muhammad Jamil Khan | Muhammad Adeel Asghar | Seyed Sajad Mirjavadi | Muhammad Rizwan | Salman Badnava | Muhammad Jamil Khan | Y. Amin | M. Rizwan | S. Mirjavadi | Muhibur Rahman | Salman Badnava | S. S. Mirjavadi
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