Recently there has been a significant effort to automate UV mapping, the process of mapping 3D-dimensional surfaces to the UV space while minimizing distortion and seam length. Although state-of-the-art methods, Autocuts and OptCuts, addressed this task via energy-minimization approaches, they fail to produce semantic seam styles, an essential factor for professional artists. The recent emergence of Graph Neural Networks (GNNs), and the fact that a mesh can be represented as a particular form of a graph, has opened a new bridge to novel graph learning-based solutions in the computer graphics domain. In this work, we use the power of supervised GNNs for the first time to propose a fully automated UV mapping framework that enables users to replicate their desired seam styles while reducing distortion and seam length. To this end, we provide augmentation and decimation tools to enable artists to create their dataset and train the network to produce their desired seam style. We provide a complementary post-processing approach for reducing the distortion based on graph algorithms to refine low-confidence seam predictions and reduce seam length (or the number of shells in our supervised case) using a skeletonization method.
翻译:最近,人们作出了重大努力,将紫外线绘图自动化,即将三维面表面映射到紫外线空间,同时尽量减少扭曲和缝合长度。尽管最先进的方法“自动截图”和“OptCuts”通过能源最小化方法处理了这项任务,但是它们未能产生对专业艺术家来说至关重要的语义接缝风格。最近出现了图形神经网络(GNNs),以及一个网状可以作为特定的图表形式呈现出来,这为计算机图形领域新的图形学习解决方案打开了新的桥梁。在这项工作中,我们首次利用受监督的GNNS的力量,提出一个完全自动化的紫外线绘图框架,使用户能够复制其理想的接缝风格,同时减少扭曲和接缝长度。为此,我们提供了增强和毁灭工具,使艺术家能够创建其数据集,并培训网络制作其理想的海平面风格。我们提供了一种辅助的后处理方法,用于减少基于图表算法的扭曲,以便用一种安全度低海平面模型预测,并减少海壳的密封度(或海壳号)的大小。