This paper introduces a framework designed to accurately predict piecewise linear mappings of arbitrary meshes via a neural network, enabling training and evaluating over heterogeneous collections of meshes that do not share a triangulation, as well as producing highly detail-preserving maps whose accuracy exceeds current state of the art. The framework is based on reducing the neural aspect to a prediction of a matrix for a single given point, conditioned on a global shape descriptor. The field of matrices is then projected onto the tangent bundle of the given mesh, and used as candidate jacobians for the predicted map. The map is computed by a standard Poisson solve, implemented as a differentiable layer with cached pre-factorization for efficient training. This construction is agnostic to the triangulation of the input, thereby enabling applications on datasets with varying triangulations. At the same time, by operating in the intrinsic gradient domain of each individual mesh, it allows the framework to predict highly-accurate mappings. We validate these properties by conducting experiments over a broad range of scenarios, from semantic ones such as morphing, registration, and deformation transfer, to optimization-based ones, such as emulating elastic deformations and contact correction, as well as being the first work, to our knowledge, to tackle the task of learning to compute UV parameterizations of arbitrary meshes. The results exhibit the high accuracy of the method as well as its versatility, as it is readily applied to the above scenarios without any changes to the framework.
翻译:本文介绍一个框架, 旨在准确预测通过神经网络对任意丁壳类的任意线性图谱, 使培训和评价对不共享三角图谱的杂质混凝土收集进行不同内容的培训和评估, 并制作高度详细保存的地图, 其准确性超过当前水平。 框架的基础是将神经方面降低到单点的矩阵预测, 以全球形状描述符为条件。 然后将矩阵字段投向给给的网格的相近捆包, 并用作预测的地图的候选人 Jacobian 。 地图由标准的 Poisson 解析法进行计算, 用作不同层, 为高效培训进行缓存的预设定。 框架的基础在于将神经方面降低到对单个网格中某个特定点的矩阵的预测, 通过在每个网格的内在梯度域内运行, 使框架能够预测高度精确的映射图。 我们通过在从一个广泛的假设中进行实验来验证这些特性, 从一个从精度的精度解度解度解度解度解度解度解变变的图状图状图层, 转变为像质变形变形的图状变变变变的图,, 的精度和变变变变变图解的图解法, 的图解法化, 等的图解变法化,, 的法化, 等变变变法的法的法化,, 的精度的法化法的法化,, 的精度的精度的精度的法化, 的法化, 的法化, 的法化, 的法化, 的法化, 的法化, 的法化, 的法化, 的变化, 的变化, 的变化, 的法化, 的变化,, 的法化, 的法化, 的变化, 的变化, 的变化, 的变化, 的变化, 的变化, 化, 的变化, 的变化, 的变化, 的变化, 的变化, 变变化, 的变变变化化化化, 的变化, 的变化,,,,