Hierarchical Granularity Alignment and State Space Modeling for Robust Multimodal AU Detection in the Wild
arXiv cs.CV / 3/13/2026
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Key Points
- The paper presents a multimodal framework built on Hierarchical Granularity Alignment and State Space Models to tackle spatial-temporal heterogeneity and unconstrained poses in AU detection.
- It leverages DINOv2 for visual features and WavLM for audio features, replacing traditional encoders to enhance representation fidelity.
- It introduces a Vision-Mamba architecture to achieve linear O(N) temporal modeling and an asymmetric cross-attention mechanism to synchronize paralinguistic audio cues with subtle facial movements.
- Experiments on the Aff-Wild2 dataset show state-of-the-art performance and top rankings in the Affective Behavior Analysis in-the-wild Competition.
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