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Research on a Microexpression Recognition Technology Based on Multimodal Fusion

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Listed:
  • Jie Kang
  • Xiao Ying Chen
  • Qi Yuan Liu
  • Si Han Jin
  • Cheng Han Yang
  • Cong Hu
  • Kai Hu

Abstract

Microexpressions have extremely high due value in national security, public safety, medical, and other fields. However, microexpressions have characteristics that are obviously different from macroexpressions, such as short duration and weak changes, which greatly increase the difficulty of microexpression recognition work. In this paper, we propose a microexpression recognition method based on multimodal fusion through a comparative study of traditional microexpression recognition algorithms such as LBP algorithm and CNN and LSTM deep learning algorithms. The method couples the separate microexpression image information with the corresponding body temperature information to establish a multimodal fusion microexpression database. This paper firstly introduces how to build a multimodal fusion microexpression database in a laboratory environment, secondly compares the recognition accuracy of LBP, LSTM, and CNN + LSTM networks for microexpressions, and finally selects the superior CNN + LSTM network in the comparison results for model training and testing on the test set under separate microexpression database and multimodal fusion database. The experimental results show that a microexpression recognition method based on multimodal fusion designed in this paper is more accurate than unimodal recognition in multimodal recognition after feature fusion, and its recognition rate reaches 75.1%, which proves that the method is feasible and effective in improving microexpression recognition rate and has good practical value.

Suggested Citation

  • Jie Kang & Xiao Ying Chen & Qi Yuan Liu & Si Han Jin & Cheng Han Yang & Cong Hu & Kai Hu, 2021. "Research on a Microexpression Recognition Technology Based on Multimodal Fusion," Complexity, Hindawi, vol. 2021, pages 1-15, November.
  • Handle: RePEc:hin:complx:5221950
    DOI: 10.1155/2021/5221950
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