Unsupervised Learning of Fine Structure Generation for 3D Point Clouds by 2D Projection Matching
Chen Chao, Zhizhong Han, Yu-Shen Liu, Matthias Zwicker

TL;DR
This paper introduces an unsupervised method for generating detailed 3D point clouds from 2D silhouettes by matching irregular 2D projections, improving the recovery of fine structures like thin tubes or planes.
Contribution
It proposes a novel 2D projection matching approach with structure adaptive sampling, enhancing the learning of fine 3D structures without 3D supervision.
Findings
Outperforms existing methods on standard benchmarks.
Effectively recovers fine and thin 3D structures.
Robust to different sampling strategies and point counts.
Abstract
Learning to generate 3D point clouds without 3D supervision is an important but challenging problem. Current solutions leverage various differentiable renderers to project the generated 3D point clouds onto a 2D image plane, and train deep neural networks using the per-pixel difference with 2D ground truth images. However, these solutions are still struggling to fully recover fine structures of 3D shapes, such as thin tubes or planes. To resolve this issue, we propose an unsupervised approach for 3D point cloud generation with fine structures. Specifically, we cast 3D point cloud learning as a 2D projection matching problem. Rather than using entire 2D silhouette images as a regular pixel supervision, we introduce structure adaptive sampling to randomly sample 2D points within the silhouettes as an irregular point supervision, which alleviates the consistency issue of sampling from…
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Taxonomy
Topics3D Shape Modeling and Analysis · 3D Surveying and Cultural Heritage · Advanced Vision and Imaging
