AI RESEARCH
Distilled Large Language Model-Driven Dynamic Sparse Expert Activation Mechanism
arXiv CS.AI
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ArXi:2603.26735v1 Announce Type: cross High inter-class similarity, extreme scale variation, and limited computational budgets hinder reliable visual recognition across diverse real-world data. Existing vision-centric and cross-modal approaches often rely on rigid fusion mechanisms and heavy annotation pipelines, leading to sub-optimal generalization. We propose the Distilled Large Language Model (LLM)-Driven Sparse Mixture-of-Experts (DS-MoE) framework, which integrates text-guided dynamic routing and lightweight multi-scale comprehension.