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PAC-NeRF: Physics Augmented Continuum Neural Radiance Fields for Geometry-Agnostic System Identification

About

Existing approaches to system identification (estimating the physical parameters of an object) from videos assume known object geometries. This precludes their applicability in a vast majority of scenes where object geometries are complex or unknown. In this work, we aim to identify parameters characterizing a physical system from a set of multi-view videos without any assumption on object geometry or topology. To this end, we propose "Physics Augmented Continuum Neural Radiance Fields" (PAC-NeRF), to estimate both the unknown geometry and physical parameters of highly dynamic objects from multi-view videos. We design PAC-NeRF to only ever produce physically plausible states by enforcing the neural radiance field to follow the conservation laws of continuum mechanics. For this, we design a hybrid Eulerian-Lagrangian representation of the neural radiance field, i.e., we use the Eulerian grid representation for NeRF density and color fields, while advecting the neural radiance fields via Lagrangian particles. This hybrid Eulerian-Lagrangian representation seamlessly blends efficient neural rendering with the material point method (MPM) for robust differentiable physics simulation. We validate the effectiveness of our proposed framework on geometry and physical parameter estimation over a vast range of materials, including elastic bodies, plasticine, sand, Newtonian and non-Newtonian fluids, and demonstrate significant performance gain on most tasks.

Xuan Li, Yi-Ling Qiao, Peter Yichen Chen, Krishna Murthy Jatavallabhula, Ming Lin, Chenfanfu Jiang, Chuang Gan• 2023

Related benchmarks

TaskDatasetResultRank
System IdentificationSynthetic dataset
RE6
50
Dynamic ReconstructionGSO
backpack19.37
12
Dynamic ReconstructionDynamic Reconstruction Dataset novel views 1.0 (test)
PSNR (backpack)18.03
12
Reconstruction EfficiencyDynamic Reconstruction backpack
Per Iteration Time (s)29.04
7
Object Dynamics GroundingSynthetic Object Dynamics Grounding Dataset
BouncyBall Score516.3
6
Dynamic ReconstructionGSO (Google Scanned Objects) (test)
PSNR22.06
5
Future state predictionGSO (test)
PSNR20.11
5
Future state predictionSynthetic dataset
PSNR20.11
4
Physical System IdentificationGSO (Google Scanned Objects) (test)
MAE log(E) (backpack)3.28
4
Physical Property PredictionDynamic Reconstruction Mean across 12 objects
MAE log(E)2.5
3
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