AI RESEARCH
Ordering Matters: Rank-Aware Selective Fusion for Blended Emotion Recognition
arXiv CS.CV
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ArXi:2605.21417v1 Announce Type: new Blended emotion recognition is challenging because emotions are often expressed as mixtures of subtle and overlapping multimodal cues rather than a single dominant signal. We propose a rank-aware multi-encoder framework that selectively combines complementary representations from diverse pre-extracted video and audio encoders. Our method projects heterogeneous encoder features into a shared latent space, estimates sample-wise encoder importance through an attention-based gating module, and fuses only the top-n most informative encoders.