Sensors (May 2023)

Hybrid Domain Consistency Constraints-Based Deep Neural Network for Facial Expression Recognition

  • Xiaoliang Zhu,
  • Junyi Sun,
  • Gendong Liu,
  • Chen Shen,
  • Zhicheng Dai,
  • Liang Zhao

DOI
https://doi.org/10.3390/s23115201
Journal volume & issue
Vol. 23, no. 11
p. 5201

Abstract

Read online

Facial expression recognition (FER) has received increasing attention. However, multiple factors (e.g., uneven illumination, facial deflection, occlusion, and subjectivity of annotations in image datasets) probably reduce the performance of traditional FER methods. Thus, we propose a novel Hybrid Domain Consistency Network (HDCNet) based on a feature constraint method that combines both spatial domain consistency and channel domain consistency. Specifically, first, the proposed HDCNet mines the potential attention consistency feature expression (different from manual features, e.g., HOG and SIFT) as effective supervision information by comparing the original sample image with the augmented facial expression image. Second, HDCNet extracts facial expression-related features in the spatial and channel domains, and then it constrains the consistent expression of features through the mixed domain consistency loss function. In addition, the loss function based on the attention-consistency constraints does not require additional labels. Third, the network weights are learned to optimize the classification network through the loss function of the mixed domain consistency constraints. Finally, experiments conducted on the public RAF-DB and AffectNet benchmark datasets verify that the proposed HDCNet improved classification accuracy by 0.3–3.84% compared to the existing methods.

Keywords