Dual-View Optical Flow for 4D Micro-Expression Recognition - A Multi-Stream Fusion Attention Approach
arXiv cs.CV / 3/31/2026
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Key Points
- The paper proposes a dual-view optical flow pipeline for 4D micro-expression recognition that converts high-dimensional mesh motion into motion-focused flow representations from two synchronized viewpoints.
- It introduces phase-aware processing by splitting sequences into onset–apex and apex–offset segments and extracting horizontal, vertical, and magnitude optical-flow channels for each phase.
- The method uses a Triple-Stream MicroAttNet with a fusion-attention module to adaptively weight modality-specific features and a squeeze-and-excitation block to strengthen magnitude-related representations.
- Training applies focal loss to address class imbalance and uses Adam with early stopping; evaluation on the multi-label 4DME dataset (5 emotion categories) reports a macro-UF1 of 0.536, beating the official workshop baseline by over 50% and winning first place.
- Ablation results indicate that both the fusion attention and SE components each provide up to ~3.6 UF1 points of improvement, supporting the contributions of each architectural element.
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