Podrobná bibliografia
| Názov: |
Objective Emotion Assessment Using a Triple Attention Network for an EEG-Based Brain–Computer Interface. |
| Autori: |
Zhang, Lihua, Zhang, Xin, Zhang, Xiu, Yu, Changyi, Liu, Xuguang |
| Zdroj: |
Brain Sciences (2076-3425); Nov2025, Vol. 15 Issue 11, p1167, 31p |
| Predmety: |
ELECTROENCEPHALOGRAPHY, EMOTION recognition, ALGORITHMS, NEURAL computers, ARTIFICIAL neural networks, BRAIN-computer interfaces, AFFECTIVE computing |
| Abstrakt: |
Background: The assessment of emotion recognition holds growing significance in research on the brain–computer interface and human–computer interaction. Among diverse physiological signals, electroencephalography (EEG) occupies a pivotal position in affective computing due to its exceptional temporal resolution and non-invasive acquisition. However, EEG signals are inherently complex, characterized by substantial noise contamination and high variability, posing considerable challenges to accurate assessment. Methods: To tackle these challenges, we propose a Triple Attention Network (TANet), a triple-attention EEG emotion recognition framework that integrates Conformer, Convolutional Block Attention Module (CBAM), and Mutual Cross-Modal Attention (MCA). The Conformer component captures temporal feature dependencies, CBAM refines spatial channel representations, and MCA performs cross-modal fusion of differential entropy and power spectral density features. Results: We evaluated TANet on two benchmark EEG emotion datasets, DEAP and SEED. On SEED, using a subject-specific cross-validation protocol, the model reached an average accuracy of 98.51 ± 1.40%. On DEAP, we deliberately adopted a segment-level splitting paradigm—in line with influential state-of-the-art methods—to ensure a direct and fair comparison of model architecture under an identical evaluation protocol. This approach, designed specifically to assess fine-grained within-trial pattern discrimination rather than cross-subject generalization, yielded accuracies of 99.69 ± 0.15% and 99.67 ± 0.13% for the valence and arousal dimensions, respectively. Compared with existing benchmark approaches under similar evaluation protocols, TANet delivers substantially better results, underscoring the strong complementary effects of its attention mechanisms in improving EEG-based emotion recognition performance. Conclusions: This work provides both theoretical insights into multi-dimensional attention for physiological signal processing and practical guidance for developing high-performance, robust EEG emotion assessment systems. [ABSTRACT FROM AUTHOR] |
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| Databáza: |
Biomedical Index |