JOURNAL ARTICLE

An Efficient LSTM Network for Emotion Recognition From Multichannel EEG Signals

Xiaobing DuCuixia MaGuanhua ZhangJinyao LiYu‐Kun LaiGuozhen ZhaoXiaoming DengYong‐Jin LiuHongan Wang

Year: 2020 Journal:   IEEE Transactions on Affective Computing Vol: 13 (3)Pages: 1528-1540   Publisher: Institute of Electrical and Electronics Engineers

Abstract

<p>Most previous EEG-based emotion recognition methods studied hand-crafted EEG features extracted from different electrodes. In this paper, we study the relation among different EEG electrodes and propose a deep learning method to automatically extract the spatial features that characterize the functional relation between EEG signals at different electrodes. Our proposed deep model is called ATtention-based LSTM with Domain Discriminator (ATDD-LSTM) that can characterize nonlinear relations among EEG signals of different electrodes. To achieve state-of-the-art emotion recognition performance, the architecture of ATDD-LSTM has two distinguishing characteristics: (1) By applying the attention mechanism to the feature vectors produced by LSTM, ATDD-LSTM automatically selects suitable EEG channels for emotion recognition, which makes the learned model concentrate on the emotion related channels in response to a given emotion; (2) To minimize the significant feature distribution shift between different sessions and/or subjects, ATDD-LSTM uses a domain discriminator to modify the data representation space and generate domain-invariant features. We evaluate the proposed ATDD-LSTM model on three public EEG emotional databases (DEAP, SEED and CMEED) for emotion recognition. The experimental results demonstrate that our ATDD-LSTM model achieves superior performance on subject-dependent (for the same subject), subject-independent (for different subjects) and cross-session (for the same subject) evaluation.</p>

Keywords:
Artificial intelligence Electroencephalography Computer science Pattern recognition (psychology) Emotion recognition Feature (linguistics) Speech recognition Representation (politics) Psychology Neuroscience

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Citation History

Topics

EEG and Brain-Computer Interfaces
Life Sciences →  Neuroscience →  Cognitive Neuroscience
Emotion and Mood Recognition
Social Sciences →  Psychology →  Experimental and Cognitive Psychology
Gaze Tracking and Assistive Technology
Physical Sciences →  Computer Science →  Human-Computer Interaction
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