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GIC: Gaussian-Informed Continuum for Physical Property Identification and Simulation

About

This paper studies the problem of estimating physical properties (system identification) through visual observations. To facilitate geometry-aware guidance in physical property estimation, we introduce a novel hybrid framework that leverages 3D Gaussian representation to not only capture explicit shapes but also enable the simulated continuum to render object masks as 2D shape surrogates during training. We propose a new dynamic 3D Gaussian framework based on motion factorization to recover the object as 3D Gaussian point sets across different time states. Furthermore, we develop a coarse-to-fine filling strategy to generate the density fields of the object from the Gaussian reconstruction, allowing for the extraction of object continuums along with their surfaces and the integration of Gaussian attributes into these continuum. In addition to the extracted object surfaces, the Gaussian-informed continuum also enables the rendering of object masks during simulations, serving as 2D-shape guidance for physical property estimation. Extensive experimental evaluations demonstrate that our pipeline achieves state-of-the-art performance across multiple benchmarks and metrics. Additionally, we illustrate the effectiveness of the proposed method through real-world demonstrations, showcasing its practical utility. Our project page is at https://jukgei.github.io/project/gic.

Junhao Cai, Yuji Yang, Weihao Yuan, Yisheng He, Zilong Dong, Liefeng Bo, Hui Cheng, Qifeng Chen• 2024

Related benchmarks

TaskDatasetResultRank
System IdentificationSynthetic dataset
RE1
50
Dynamic ReconstructionDynamic Reconstruction Dataset novel views 1.0 (test)
PSNR (backpack)18.22
12
Dynamic ReconstructionGSO
backpack18.94
12
Dynamics PredictionPhlowers (In-Sequence)
PSNR15.78
7
Dynamics PredictionPhlowers Cross-Sequence
PSNR15.85
7
Reconstruction EfficiencyDynamic Reconstruction backpack
Per Iteration Time (s)37.33
7
Dynamic ReconstructionGSO (Google Scanned Objects) (test)
PSNR21.01
5
Future state predictionGSO (test)
PSNR19.2
5
Future state predictionSynthetic dataset
PSNR19.2
4
Physical System IdentificationGSO (Google Scanned Objects) (test)
MAE log(E) (backpack)1.16
4
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