ArXiv TLDR

PhyEdit: Towards Real-World Object Manipulation via Physically-Grounded Image Editing

🐦 Tweet
2604.07230

Ruihang Xu, Dewei Zhou, Xiaolong Shen, Fan Ma, Yi Yang

cs.CV

TLDR

PhyEdit introduces a physically-grounded image editing framework that uses 3D geometry to enable accurate object manipulation, outperforming current models.

Key contributions

  • PhyEdit: A framework for physically accurate image editing using explicit geometric simulation and 2D-3D supervision.
  • RealManip-10K: A new real-world dataset with paired images and depth for 3D-aware object manipulation.
  • ManipEval: A benchmark with multi-dimensional metrics to evaluate 3D spatial control and geometric consistency.
  • Achieves superior 3D geometric accuracy and manipulation consistency compared to existing generative models.

Why it matters

Physically accurate object manipulation is crucial for interactive world models. PhyEdit addresses this by incorporating 3D geometry, leading to more realistic and consistent image edits. This advancement has significant implications for generative AI applications requiring precise spatial control.

Original Abstract

Achieving physically accurate object manipulation in image editing is essential for its potential applications in interactive world models. However, existing visual generative models often fail at precise spatial manipulation, resulting in incorrect scaling and positioning of objects. This limitation primarily stems from the lack of explicit mechanisms to incorporate 3D geometry and perspective projection. To achieve accurate manipulation, we develop PhyEdit, an image editing framework that leverages explicit geometric simulation as contextual 3D-aware visual guidance. By combining this plug-and-play 3D prior with joint 2D--3D supervision, our method effectively improves physical accuracy and manipulation consistency. To support this method and evaluate performance, we present a real-world dataset, RealManip-10K, for 3D-aware object manipulation featuring paired images and depth annotations. We also propose ManipEval, a benchmark with multi-dimensional metrics to evaluate 3D spatial control and geometric consistency. Extensive experiments show that our approach outperforms existing methods, including strong closed-source models, in both 3D geometric accuracy and manipulation consistency.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.