Frontiers in Neuroscience (Aug 2023)

A novel feature fusion network for multimodal emotion recognition from EEG and eye movement signals

  • Baole Fu,
  • Baole Fu,
  • Chunrui Gu,
  • Chunrui Gu,
  • Ming Fu,
  • Ming Fu,
  • Yuxiao Xia,
  • Yuxiao Xia,
  • Yinhua Liu,
  • Yinhua Liu,
  • Yinhua Liu

DOI
https://doi.org/10.3389/fnins.2023.1234162
Journal volume & issue
Vol. 17

Abstract

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Emotion recognition is a challenging task, and the use of multimodal fusion methods for emotion recognition has become a trend. Fusion vectors can provide a more comprehensive representation of changes in the subject's emotional state, leading to more accurate emotion recognition results. Different fusion inputs or feature fusion methods have varying effects on the final fusion outcome. In this paper, we propose a novel Multimodal Feature Fusion Neural Network model (MFFNN) that effectively extracts complementary information from eye movement signals and performs feature fusion with EEG signals. We construct a dual-branch feature extraction module to extract features from both modalities while ensuring temporal alignment. A multi-scale feature fusion module is introduced, which utilizes cross-channel soft attention to adaptively select information from different spatial scales, enabling the acquisition of features at different spatial scales for effective fusion. We conduct experiments on the publicly available SEED-IV dataset, and our model achieves an accuracy of 87.32% in recognizing four emotions (happiness, sadness, fear, and neutrality). The results demonstrate that the proposed model can better explore complementary information from EEG and eye movement signals, thereby improving accuracy, and stability in emotion recognition.

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