Recent techniques have been successful in reconstructing surfaces as level sets of learned functions (such as signed distance fields) parameterized by deep neural networks. Many of these methods, however, learn only closed surfaces and are unable to reconstruct shapes with boundary curves. We propose a hybrid shape representation that combines explicit boundary curves with implicit learned interiors. Using machinery from geometric measure theory, we parameterize currents using deep networks and use stochastic gradient descent to solve a minimal surface problem. By modifying the metric according to target geometry coming, e.g., from a mesh or point cloud, we can use this approach to represent arbitrary surfaces, learning implicitly defined shapes with explicitly defined boundary curves. We further demonstrate learning families of shapes jointly parameterized by boundary curves and latent codes.
翻译:最近的技术成功地将表面重建为深神经网络参数化的层次学函数组(如经签署的距离场),但其中许多方法只学习封闭表面,无法用边界曲线来重建形状。我们建议采用混合形状表示法,将明显的边界曲线与隐含的学习内涵结合起来。我们利用几何测量理论的机械,利用深网络来将海流参数化,并利用随机梯度梯度下沉解决一个最小的表面问题。通过根据目标几何测量法(例如从网状或点云)修改测量法,我们可以使用这种方法来代表任意的表面,学习以明确界定的边界曲线来暗含的形状。我们进一步展示了通过边界曲线和潜在代码共同参数化的形状组别。