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📄 Abstract
Abstract: Unsigned Distance Functions (UDFs) can be used to represent non-watertight
surfaces in a deep learning framework. However, UDFs tend to be brittle and
difficult to learn, in part because the surface is located exactly where the
UDF is non-differentiable. In this work, we show that Gradient Distance
Functions (GDFs) can remedy this by being differentiable at the surface while
still being able to represent open surfaces. This is done by associating to
each 3D point a 3D vector whose norm is taken to be the unsigned distance to
the surface and whose orientation is taken to be the direction towards the
closest surface point. We demonstrate the effectiveness of GDFs on ShapeNet
Car, Multi-Garment, and 3D-Scene datasets with both single-shape reconstruction
networks or categorical auto-decoders.