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Micro-Expression Recognition Using Convolutional Variational Attention Transformer (ConVAT) With Multihead Attention Mechanism

H Talib, Kaiwei Xu, Yanlong Cao, Yiyue Xu, Zhijie Xu, Muhammad Zaman, Adnan Akhunzada

2025IEEE Access12 citationsDOIOpen Access PDF

Abstract

Micro-Expression Recognition is crucial in various fields such as behavioral analysis, security, and psychological studies, offering valuable insights into subtle and often concealed emotional states. Despite significant advancements in deep learning models, challenges persist in accurately handling the nuanced and fleeting nature of micro-expressions, particularly when applied across diverse datasets with varied expressions. Existing models often struggle with precision and adaptability, leading to inconsistent recognition performance. To address these limitations, we propose the Convolutional Variational Attention Transformer (ConVAT), a novel model that leverages a multi-head attention mechanism integrated with convolutional networks, optimized specifically for detailed micro-expression analysis. Our methodology employs the Leave-One-Subject-Out (LOSO) cross-validation technique across three widely used datasets: SAMM, CASME II, and SMIC. The results demonstrate the effectiveness of ConVAT, achieving impressive performance with 98.73% accuracy on the SAMM dataset, 97.95% on the SMIC dataset, and 97.65% on CASME II. These outcomes not only surpass current state-of-the-art benchmarks but also highlight ConVAT’s robustness and reliability in capturing micro-expressions, marking a significant advancement toward developing sophisticated automated systems for real-world applications in micro-expression recognition.

Topics & Concepts

Computer scienceTransformerArtificial intelligenceSpeech recognitionMechanism (biology)Pattern recognition (psychology)Electrical engineeringVoltagePhysicsEngineeringQuantum mechanicsNeural Networks and ApplicationsCCD and CMOS Imaging SensorsEEG and Brain-Computer Interfaces