AI RESEARCH

VideoRouter: Query-Adaptive Dual Routing for Efficient Long-Video Understanding

arXiv CS.CV

ArXi:2605.05848v1 Announce Type: new Video large multimodal models increasingly face a scalability bottleneck: long videos produce excessively long visual-token sequences, which sharply increase memory and latency during inference. While existing compression methods are effective in specific settings, most are either weakly query-aware or apply a fixed compression policy across frames, proving suboptimal when visual evidence is unevenly distributed over time. To address this, we present VideoRouter, a query-adaptive dual-router framework built on InternVL for budgeted evidence allocation.