We present a novel method, called NeuralUDF, for reconstructing surfaces with arbitrary topologies from 2D images via volume rendering. Recent advances in neural rendering based reconstruction have achieved compelling results. However, these methods are limited to objects with closed surfaces since they adopt Signed Distance Function (SDF) as surface representation which requires the target shape to be divided into inside and outside. In this paper, we propose to represent surfaces as the Unsigned Distance Function (UDF) and develop a new volume rendering scheme to learn the neural UDF representation. Specifically, a new density function that correlates the property of UDF with the volume rendering scheme is introduced for robust optimization of the UDF fields. Experiments on the DTU and DeepFashion3D datasets show that our method not only enables high-quality reconstruction of non-closed shapes with complex typologies, but also achieves comparable performance to the SDF based methods on the reconstruction of closed surfaces.
翻译:我们提出了一个新颖的方法,称为NeuralUDF,用于通过体积转换从 2D 图像中任意重建表面。最近神经造影重建的进展取得了令人瞩目的结果。然而,这些方法仅限于封闭表面的物体,因为它们采用签名远程函数(SDF)作为表面表示法,要求将目标形状分为内外。在本文中,我们提议将表面作为无符号远程函数(UDF)来代表,并开发一个新的体积转换方案,以学习神经UDF 代表法。具体地说,为了对UDF 字段进行强有力的优化,引入了与UDF 体的特性相关的新的密度函数。在DTU和DeepF时尚3D数据集上进行的实验表明,我们的方法不仅能够高质量地重建具有复杂类型的非封闭形状,而且能够根据重建封闭表面的方法实现与SDF的类似性功能。