论文标题
3PSDF:具有任意拓扑的学习表面的三极签名距离功能
3PSDF: Three-Pole Signed Distance Function for Learning Surfaces with Arbitrary Topologies
论文作者
论文摘要
使用神经隐式功能学习3D形状的最新进展,通过打破了以前的分辨率和多样性的障碍来取得令人印象深刻的结果。但是,大多数此类方法仅限于封闭式表面,因为它们需要将空间分为内部和外部。已经提出了基于未签名距离功能的最新作品,以处理包含开放表面和封闭表面的复杂几何形状。尽管如此,由于它们的直接输出是点云,因此从离散点获得高质量的网格划分结果仍然是一个悬而未决的问题。我们提出了一种新颖的可学习隐式表示,称为三极签名的距离函数(3PSDF),该表示可以代表具有任意拓扑的非紧密3D形状,同时使用经典的Martinging Cupes算法支持易于的野外转换。我们方法的关键是除了传统的输入标签外,还引入了一个新标志,无效的符号。空符号的存在可能会阻止从In/Out区域的一分子派生的封闭的等图的形成。此外,我们提出了一个专门的学习框架,以有效地学习3PSDF,而不必担心由于无效标签而消失的梯度。实验结果表明,我们的方法在定量和质量上都超过了以前的最新方法。
Recent advances in learning 3D shapes using neural implicit functions have achieved impressive results by breaking the previous barrier of resolution and diversity for varying topologies. However, most of such approaches are limited to closed surfaces as they require the space to be divided into inside and outside. More recent works based on unsigned distance function have been proposed to handle complex geometry containing both the open and closed surfaces. Nonetheless, as their direct outputs are point clouds, robustly obtaining high-quality meshing results from discrete points remains an open question. We present a novel learnable implicit representation, called the three-pole signed distance function (3PSDF), that can represent non-watertight 3D shapes with arbitrary topologies while supporting easy field-to-mesh conversion using the classic Marching Cubes algorithm. The key to our method is the introduction of a new sign, the NULL sign, in addition to the conventional in and out labels. The existence of the null sign could stop the formation of a closed isosurface derived from the bisector of the in/out regions. Further, we propose a dedicated learning framework to effectively learn 3PSDF without worrying about the vanishing gradient due to the null labels. Experimental results show that our approach outperforms the previous state-of-the-art methods in a wide range of benchmarks both quantitatively and qualitatively.