Sleep & Wellness Guide
Reweighting Framewise Attention in Video Transformers for Facial Expression Understanding
Key Takeaway
A robotics research paper on Reweighting Framewise Attention in Video Transformers for Facial Expression Understanding.
Practical Tips
Practical tips and how-to guidance will be added by our editorial team.
中文解读
中文解读待补充:本站将优先为睡眠改善、失眠治疗、助眠方法等高价值文章补充中文说明。
Article Summary
Understanding facial expressions in videos requires modeling subtle and localized facial dynamics under unconstrained conditions. Although recent Vision Transformer~(ViT)-based video models have shown strong performance through large-scale self-supervised pretraining, their attention mechanisms often emphasize dominant global motions and coarse temporal dynamics, limiting sensitivity to fine-grained facial variations. To address this limitation, we propose MiRA (Marginal-induced Attention Redistribution), a plug-in frame-marginal attention redistribution framework for ViT backbones that enhances spatio-temporal selectivity toward subtle facial dynamics without introducing additional trainable parameters. MiRA derives frame-level confidence and intra-frame concentration statistics from self-attention maps to estimate frame-wise marginal importance and redistribute attention toward spatiotemporally localized facial cues. We first introduce a principled \textit{exact mode} based on post-softmax attention redistribution. To further improve efficiency, we propose \textit{flashLite mode}, a lightweight pre-softmax approximation that integrates frame-marginal redistribution into FlashAttention kernels while preserving the effectiveness of the exact formulation. Experimental results on challenging Facial Expression Recognition~(FER) benchmarks demonstrate consistent improvements over strong ViT baselines.
Sources & References
Need to track a shipment?
Use our free logistics tracking tool to check real-time delivery status for USPS, FedEx, UPS, DHL, Amazon and 1000+ carriers worldwide.
Track a Package Now
Comments