SOPHY: Generating Simulation-Ready Objects with Physical Materials
- URL: http://arxiv.org/abs/2504.12684v1
- Date: Thu, 17 Apr 2025 06:17:24 GMT
- Title: SOPHY: Generating Simulation-Ready Objects with Physical Materials
- Authors: Junyi Cao, Evangelos Kalogerakis,
- Abstract summary: SOPHY is a generative model for 3D physics-aware shape synthesis.<n>Our approach jointly synthesizes shape, texture, and material properties related to physics-grounded dynamics.
- Score: 10.156212838002903
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present SOPHY, a generative model for 3D physics-aware shape synthesis. Unlike existing 3D generative models that focus solely on static geometry or 4D models that produce physics-agnostic animations, our approach jointly synthesizes shape, texture, and material properties related to physics-grounded dynamics, making the generated objects ready for simulations and interactive, dynamic environments. To train our model, we introduce a dataset of 3D objects annotated with detailed physical material attributes, along with an annotation pipeline for efficient material annotation. Our method enables applications such as text-driven generation of interactive, physics-aware 3D objects and single-image reconstruction of physically plausible shapes. Furthermore, our experiments demonstrate that jointly modeling shape and material properties enhances the realism and fidelity of generated shapes, improving performance on generative geometry evaluation metrics.
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