VideoPhy-2: A Challenging Action-Centric Physical Commonsense Evaluation in Video Generation

Abstract

Large-scale video generative models, capable of creating realistic videos of diverse visual concepts, are strong candidates for general-purpose physical world simulators. However, their adherence to physical commonsense across real-world actions remains unclear (e.g., playing tennis, backflip). Existing benchmarks suffer from limitations such as limited size, lack of human evaluation, sim-to-real gaps, and absence of fine-grained physical rule analysis. To address this, we introduce VideoPhy-2, an action-centric dataset for evaluating physical commonsense in generated videos. We curate 4000 diverse and detailed prompts for video synthesis from modern generative models. We perform human evaluation that assesses semantic adherence, physical commonsense, and grounding of physical rules in the generated videos. Our findings reveal major shortcomings, with even the best model achieving only $47.7\%$ joint performance (i.e., high semantic and physical commonsense adherence) on the hard subset of VideoPhy-2. We find that the models particularly struggle with conservation laws like mass and momentum. Finally, we also train VideoPhy-2-AutoEval, an automatic evaluator for fast, reliable assessment on our dataset. Overall, VideoPhy-2 serves as a rigorous benchmark, exposing critical gaps in video generative models and guiding future research in physically-grounded video generation. The data and code is available at \url{https://videophy2.github.io/}.

Cite

Text

Bansal et al. "VideoPhy-2: A Challenging Action-Centric Physical Commonsense Evaluation in Video Generation." International Conference on Learning Representations, 2026.

Markdown

[Bansal et al. "VideoPhy-2: A Challenging Action-Centric Physical Commonsense Evaluation in Video Generation." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/bansal2026iclr-videophy2/)

BibTeX

@inproceedings{bansal2026iclr-videophy2,
  title     = {{VideoPhy-2: A Challenging Action-Centric Physical Commonsense Evaluation in Video Generation}},
  author    = {Bansal, Hritik and Peng, Clark and Bitton, Yonatan and Goldenberg, Roman and Grover, Aditya and Chang, Kai-Wei},
  booktitle = {International Conference on Learning Representations},
  year      = {2026},
  url       = {https://mlanthology.org/iclr/2026/bansal2026iclr-videophy2/}
}