Review Article Open Access

Machine Learning Integration for Precise Facial Micro-Expression Recognition

Viola Bakiasi Shtino1, Markela Muça2 and Senada Bushati1
  • 1 Department Computer Science, Faculty of Information Technology, University of Durres, Albania
  • 2 Department of Applied Mathematics, Faculty of Natural Science, University of Tirana, Albania

Abstract

This study advances facial micro-expression recognition through innovative machine-learning techniques, addressing critical needs in psychology, security, and human-computer interaction. The purpose of this study is to improve micro-expression recognition through the optimization of feature transformation and machine learning algorithms. We introduce a novel approach combining Kernel Principal Component Analysis (KPCA) and Uniform Manifold Approximation and Projection (UMAP) for dimensionality reduction, paired with advanced classifiers (SVM, Random Forest, k-NN, Decision Trees) to enhance recognition accuracy of these subtle, rapid facial movements. This combination outperforms previous KPCA and t-SNE approaches in preserving both local and global structures of high-dimensional facial data. Our rigorous experimental design involved 28,175 samples from the AffectNet dataset (22,540 for training and 5,635 for validation), utilizing a combination of Kernel Principal Component Analysis (KPCA) with Uniform Manifold Approximation and Projection (UMAP) for dimensionality reduction, followed by random forest classification to capture micro-expressions. Ethical standards, including informed consent and data protection, were strictly maintained throughout. The results show a marked improvement over traditional methods, with our top-performing model achieving 94% accuracy. Key contributions include The optimization of KPCA and UMAP for dimensionality reduction, achieving a state-of-the-art 94% accuracy with Random Forest classification on the AffectNet dataset; Significant computational efficiency gains, reducing training time while improving accuracy; Comprehensive quantitative comparisons of classification performance (accuracy, precision, recall, F1-score) across various model combinations; and Rigorous analysis of the impact of dimensionality reduction techniques on preserving essential micro-expression features. These advancements significantly push the boundaries of emotion recognition technology. This research has far-reaching implications, potentially revolutionizing lie detection, autism research, and human-robot interaction. Our findings pave the way for a more nuanced understanding of human emotions in various applications. The software used for the experiments was Python.

Journal of Computer Science
Volume 20 No. 11, 2024, 1545-1558

DOI: https://doi.org/10.3844/jcssp.2024.1545.1558

Submitted On: 6 May 2024 Published On: 22 October 2024

How to Cite: Shtino, V. B., Muça, M. & Bushati, S. (2024). Machine Learning Integration for Precise Facial Micro-Expression Recognition. Journal of Computer Science, 20(11), 1545-1558. https://doi.org/10.3844/jcssp.2024.1545.1558

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Keywords

  • Affect Net Database
  • Facial Micro-Expression Recognition
  • Dimension Reduction Techniques
  • Advanced Classification Models
  • Optimization