We present a neural technique for learning to select a local sub-region around a point which can be used for mesh parameterization. The motivation for our framework is driven by interactive workflows used for decaling, texturing, or painting on surfaces. Our key idea is to incorporate segmentation probabilities as weights of a classical parameterization method, implemented as a novel differentiable parameterization layer within a neural network framework. We train a segmentation network to select 3D regions that are parameterized into 2D and penalized by the resulting distortion, giving rise to segmentations which are distortion-aware. Following training, a user can use our system to interactively select a point on the mesh and obtain a large, meaningful region around the selection which induces a low-distortion parameterization. Our code and project page are currently available.
翻译:我们提出了一种神经技术,用于学习选择围绕一个点的局部子区域,这可以用于网格参数化。我们的框架的动机来自用于装饰、纹理或绘制表面的交互式工作流程。我们的关键思想是将分割概率作为传统参数化方法的权重,实现为一个新的可微参数化层,在神经网络框架内。我们训练一个分割网络,选择被参数化为2D的3D区域,并通过结果的畸变进行惩罚,从而产生畸变感知的分割结果。训练后,用户可以使用我们的系统交互式地选择网格上的一个点,并获得一个大的、有意义的区域,该区域引出了低畸变的参数化方法。我们的代码和项目页面目前可用。