PIE-NeRF🍕: Physics-based Interactive Elastodynamics with NeRF

CVPR 2024

University of Utah1, Zhejiang University2, University of California, Los Angeles3
Utah ZJU UCLA

Pie-Nerf🍕 is an efficient and versatile pipeline that synthesizes physics-based novel motions of complex NeRF models interactively.

Abstract

We show that physics-based simulations can be seamlessly integrated with NeRF to generate high-quality elastodynamics of real-world objects. Unlike existing methods, we discretize nonlinear hyperelasticity in a meshless way, obviating the necessity for intermediate auxiliary shape proxies like a tetrahedral mesh or voxel grid. A quadratic generalized moving least square (Q-GMLS) is employed to capture nonlinear dynamics and large deformation on the implicit model. Such meshless integration enables versatile simulations of complex and codimensional shapes. We adaptively place the least-square kernels according to the NeRF density field to significantly reduce the complexity of the nonlinear simulation. As a result, physically realistic animations can be conveniently synthesized using our method for a wide range of hyperelastic materials at an interactive rate.

Pipeline



The input of PIE-NeRF is the same as other NeRF-based frameworks, which consists of a collection of images of a static scene. An adaptive Poisson disk sampling is followed to query the 3D geometry of the model, which are sparsified into n Q-GMLS kernels. Integrator points are placed over the model, including centers of Q-GMLS kernels (i.e., kernel IPs). Discretization at kernels and numerical integration at IPs enable efficient synthesis of novel and physics-based elastodynamic motions. The quadratic warping scheme helps to better retrieve the color/texture of a deformed spatial position to render the final result.

Interactive showcase


We interact with all types of objects and generat physically realistic dynamic motions.

Swaying excavator

Dragging ficus tree

Chopper riding a truck

Tyrannosaurus dance

Dragging chair

BibTeX

@misc{feng2023pienerf,
      title={PIE-NeRF: Physics-based Interactive Elastodynamics with NeRF}, 
      author={Yutao Feng and Yintong Shang and Xuan Li and Tianjia Shao and Chenfanfu Jiang and Yin Yang},
      year={2023},
      eprint={2311.13099},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}