AI RESEARCH
STAR: Semantic-Temporal Adaptive Representation Learning for Few-Shot Action Recognition
arXiv CS.AI
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ArXi:2605.13202v1 Announce Type: cross Few-shot action recognition (FSAR) requires models to generalize to novel action categories from only a handful of annotated samples. Despite progress with vision-language models, existing approaches still suffer from semantic-temporal misalignment, where static textual prompts fail to capture decisive visual cues that appear sparsely across sequences, and from inadequate modeling of multi-scale temporal dynamics, as short-term discriminative cues and long-range dependencies are often either oversmoothed or fragmented.