AI RESEARCH

UniVBench: Towards Unified Evaluation for Video Foundation Models

arXiv CS.CV

ArXi:2602.21835v2 Announce Type: replace Video foundation models aim to integrate video understanding, generation, editing, and instruction following within a single framework, making them a central direction for next-generation multimodal systems. However, existing evaluation benchmarks remain fragmented and limited in scope, as they each target a single task, rely on task-specific metrics, and typically use short or simple video clips. As a result, they do not capture the unified capabilities that these models are designed to deliver. To address this gap, we