TextureNet: Consistent Local Parametrizations for Learning from High-Resolution Signals on Meshes
IEEE Conference on Computer Vision and Pattern Recognition (CVPR) oral presentation, June 2019
Abstract
We introduce, TextureNet, a neural network architecture designed to extract
features from high-resolution signals associated with 3D surface meshes (e.g.,
color texture maps). The key idea is to utilize a 4-rotational symmetric
(4-RoSy) field to define a domain for convolution on a surface. Though 4-RoSy
fields have several properties favorable for convolution on surfaces (low
distortion, few singularities, consistent parameterization, etc.), orientations
are ambiguous up to 4-fold rotation at any sample point. So, we introduce a new
convolutional operator invariant to the 4-RoSy ambiguity and use it in a
network to extract features from high-resolution signals on geodesic
neighborhoods of a surface. In comparison to alternatives, such as PointNet
based methods which lack a notion of orientation, the coherent structure given
by these neighborhoods results in significantly stronger features. As an
example application, we demonstrate the benefits of our architecture for 3D
semantic segmentation of textured 3D meshes. The results show that our method
outperforms all existing methods on the basis of mean IoU by a significant
margin in both geometry-only (6.4%) and RGB+Geometry (6.9-8.2%) settings.
Citation
Jingwei Huang, Haotian Zhang, Li Yi, Thomas Funkhouser, Matthias Nießner, and Leonidas Guibas.
"TextureNet: Consistent Local Parametrizations for Learning from High-Resolution Signals on Meshes."
IEEE Conference on Computer Vision and Pattern Recognition (CVPR) oral presentation, June 2019.
BibTeX
@inproceedings{Huang:2019:TCL, author = "Jingwei Huang and Haotian Zhang and Li Yi and Thomas Funkhouser and Matthias Nie{\ss}ner and Leonidas Guibas", title = "{TextureNet}: Consistent Local Parametrizations for Learning from High-Resolution Signals on Meshes", booktitle = "IEEE Conference on Computer Vision and Pattern Recognition (CVPR) oral presentation", year = "2019", month = jun }