OSCBench: Benchmarking Object State Change in Text-to-Video Generation
arXiv cs.CL / 3/13/2026
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Key Points
- OSCBench introduces a specialized benchmark to evaluate object state change (OSC) understanding in text-to-video models, addressing a gap not covered by existing benchmarks.
- Built from instructional cooking data, OSCBench organizes action-object interactions into regular, novel, and compositional scenarios to probe both in-distribution performance and generalization.
- The authors evaluate six representative open-source and proprietary T2V models using human user studies and multimodal LLM-based automatic evaluation, revealing strong performance on semantic and scene alignment but persistent difficulty with OSC.
- The study positions OSC as a key bottleneck for state-aware video generation and establishes OSCBench as a diagnostic tool to guide future model improvements.
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