论文标题
隐式功能学习的神经无符号距离字段
Neural Unsigned Distance Fields for Implicit Function Learning
论文作者
论文摘要
在这项工作中,我们针对可学习的输出表示,该表示允许连续,高分辨率的任意形状输出。最近的作品与神经网络隐含地代表了3D表面,从而打破了以前的分辨率障碍,并能够代表各种拓扑。但是,神经隐式表示仅限于封闭表面,将空间划分为内部和外部。许多现实世界的物体,例如被传感器,衣服或具有内部结构的汽车扫描的场景的墙壁都没有关闭。就数据预处理而言,这构成了一个重大的障碍(对象需要人为封闭,创建工件)和输出开放表面的能力。在这项工作中,我们提出了基于神经网络的模型神经距离场(NDF),该模型可预测给定稀疏点云的任意3D形状的无符号距离场。 NDF表示高分辨率的表面为先前的隐式模型,但不需要封闭的表面数据,并且显着扩大了输出中代表形状的类别。 NDF允许将表面提取为非常密集的点云和网状。我们还表明,NDF允许进行表面正常计算,并且可以使用球体跟踪的稍作修改来渲染。我们发现NDF可用于多目标回归(一个输入的多个输出),其技术已仅用于图形中渲染。 Shapenet上的实验表明,NDF虽然很简单,但却是最先进的,并且可以用内部结构(例如总线内的椅子)重建形状。值得注意的是,我们表明NDF不限于3D形状,并且可以近似更通用的开放表面,例如曲线,歧管和功能。代码可在https://virtualhumans.mpi-inf.mpg.de/ndf/上进行研究。
In this work we target a learnable output representation that allows continuous, high resolution outputs of arbitrary shape. Recent works represent 3D surfaces implicitly with a Neural Network, thereby breaking previous barriers in resolution, and ability to represent diverse topologies. However, neural implicit representations are limited to closed surfaces, which divide the space into inside and outside. Many real world objects such as walls of a scene scanned by a sensor, clothing, or a car with inner structures are not closed. This constitutes a significant barrier, in terms of data pre-processing (objects need to be artificially closed creating artifacts), and the ability to output open surfaces. In this work, we propose Neural Distance Fields (NDF), a neural network based model which predicts the unsigned distance field for arbitrary 3D shapes given sparse point clouds. NDF represent surfaces at high resolutions as prior implicit models, but do not require closed surface data, and significantly broaden the class of representable shapes in the output. NDF allow to extract the surface as very dense point clouds and as meshes. We also show that NDF allow for surface normal calculation and can be rendered using a slight modification of sphere tracing. We find NDF can be used for multi-target regression (multiple outputs for one input) with techniques that have been exclusively used for rendering in graphics. Experiments on ShapeNet show that NDF, while simple, is the state-of-the art, and allows to reconstruct shapes with inner structures, such as the chairs inside a bus. Notably, we show that NDF are not restricted to 3D shapes, and can approximate more general open surfaces such as curves, manifolds, and functions. Code is available for research at https://virtualhumans.mpi-inf.mpg.de/ndf/.