ShapeShifter: 3D Variations Using Multiscale and Sparse Point-Voxel Diffusion
- URL: http://arxiv.org/abs/2502.02187v1
- Date: Tue, 04 Feb 2025 10:02:40 GMT
- Title: ShapeShifter: 3D Variations Using Multiscale and Sparse Point-Voxel Diffusion
- Authors: Nissim Maruani, Wang Yifan, Matthew Fisher, Pierre Alliez, Mathieu Desbrun,
- Abstract summary: This paper proposes ShapeShifter, a new 3D generative model that learns to synthesize shape variations based on a single reference model.
We show that our resulting variations better capture the fine details of their original input and can handle more general types of surfaces than previous SDF-based methods.
- Score: 19.30740914413954
- License:
- Abstract: This paper proposes ShapeShifter, a new 3D generative model that learns to synthesize shape variations based on a single reference model. While generative methods for 3D objects have recently attracted much attention, current techniques often lack geometric details and/or require long training times and large resources. Our approach remedies these issues by combining sparse voxel grids and point, normal, and color sampling within a multiscale neural architecture that can be trained efficiently and in parallel. We show that our resulting variations better capture the fine details of their original input and can handle more general types of surfaces than previous SDF-based methods. Moreover, we offer interactive generation of 3D shape variants, allowing more human control in the design loop if needed.
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