CrossGen: Learning and Generating Cross Fields for Quad Meshing
Qiujie Dong, Jiepeng Wang, Rui Xu, Cheng Lin, Yuan Liu, Shiqing Xin, Zichun Zhong, Xin Li, Changhe Tu, Taku Komura, Leif Kobbelt, Scott Schaefer, Wenping Wang

TL;DR
CrossGen is a fast, unified framework that generates high-quality cross fields for quad meshing from point-cloud surfaces using deep learning, enabling rapid and noise-resilient shape processing.
Contribution
It introduces a novel auto-encoder and diffusion-based model for efficient, high-quality cross field generation directly from point-cloud data, unifying geometry and cross fields in a shared latent space.
Findings
Fast cross field computation within one second
High geometric fidelity and noise resilience
Effective for diverse surface shapes
Abstract
Cross fields play a critical role in various geometry processing tasks, especially for quad mesh generation. Existing methods for cross field generation often struggle to balance computational efficiency with generation quality, using slow per-shape optimization. We introduce CrossGen, a novel framework that supports both feed-forward prediction and latent generative modeling of cross fields for quad meshing by unifying geometry and cross field representations within a joint latent space. Our method enables extremely fast computation of high-quality cross fields of general input shapes, typically within one second without per-shape optimization. Our method assumes a point-sampled surface, also called a {\em point-cloud surface}, as input, so we can accommodate various surface representations by a straightforward point sampling process. Using an auto-encoder network architecture, we…
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