Learning to Infer Implicit Surfaces without 3D Supervision
Shichen Liu, Shunsuke Saito, Weikai Chen, Hao Li

TL;DR
This paper introduces a novel method for learning implicit 3D surfaces from 2D images without requiring 3D supervision, using a ray-based probing technique and geometric regularization to improve shape inference.
Contribution
It presents a new differentiable framework for implicit surface learning from images, addressing efficiency and geometric control issues without 3D labels.
Findings
Outperforms state-of-the-art methods quantitatively
Achieves high-quality 3D shape reconstructions from single images
Provides efficient and flexible implicit surface learning
Abstract
Recent advances in 3D deep learning have shown that it is possible to train highly effective deep models for 3D shape generation, directly from 2D images. This is particularly interesting since the availability of 3D models is still limited compared to the massive amount of accessible 2D images, which is invaluable for training. The representation of 3D surfaces itself is a key factor for the quality and resolution of the 3D output. While explicit representations, such as point clouds and voxels, can span a wide range of shape variations, their resolutions are often limited. Mesh-based representations are more efficient but are limited by their ability to handle varying topologies. Implicit surfaces, however, can robustly handle complex shapes, topologies, and also provide flexible resolution control. We address the fundamental problem of learning implicit surfaces for shape inference…
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Taxonomy
Topics3D Shape Modeling and Analysis · Advanced Vision and Imaging · Computer Graphics and Visualization Techniques
