3DStyleNet: Creating 3D Shapes with Geometric and Texture Style
Variations
- URL: http://arxiv.org/abs/2108.12958v1
- Date: Mon, 30 Aug 2021 02:28:31 GMT
- Title: 3DStyleNet: Creating 3D Shapes with Geometric and Texture Style
Variations
- Authors: Kangxue Yin, Jun Gao, Maria Shugrina, Sameh Khamis, Sanja Fidler
- Abstract summary: We propose a method to create plausible geometric and texture style variations of 3D objects.
Our method can create many novel stylized shapes, resulting in effortless 3D content creation and style-ware data augmentation.
- Score: 81.45521258652734
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We propose a method to create plausible geometric and texture style
variations of 3D objects in the quest to democratize 3D content creation. Given
a pair of textured source and target objects, our method predicts a part-aware
affine transformation field that naturally warps the source shape to imitate
the overall geometric style of the target. In addition, the texture style of
the target is transferred to the warped source object with the help of a
multi-view differentiable renderer. Our model, 3DStyleNet, is composed of two
sub-networks trained in two stages. First, the geometric style network is
trained on a large set of untextured 3D shapes. Second, we jointly optimize our
geometric style network and a pre-trained image style transfer network with
losses defined over both the geometry and the rendering of the result. Given a
small set of high-quality textured objects, our method can create many novel
stylized shapes, resulting in effortless 3D content creation and style-ware
data augmentation. We showcase our approach qualitatively on 3D content
stylization, and provide user studies to validate the quality of our results.
In addition, our method can serve as a valuable tool to create 3D data
augmentations for computer vision tasks. Extensive quantitative analysis shows
that 3DStyleNet outperforms alternative data augmentation techniques for the
downstream task of single-image 3D reconstruction.
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