SkeletonNet: A Topology-Preserving Solution for Learning Mesh Reconstruction of Object Surfaces from RGB Images
Jiapeng Tang, Xiaoguang Han, Mingkui Tan, Xin Tong, Kui Jia

TL;DR
SkeletonNet introduces a topology-preserving skeletal representation to improve 3D surface reconstruction from RGB images, effectively handling complex topologies and outperforming existing methods.
Contribution
The paper proposes SkeletonNet, a novel topology-preserving skeletal shape representation and models SkeGCNN and SkeDISN for enhanced surface reconstruction from RGB images.
Findings
SkeletonNet outperforms existing methods in surface reconstruction tasks.
SkeGCNN and SkeDISN demonstrate superior accuracy and robustness.
The approach effectively handles complex topologies in 3D reconstruction.
Abstract
This paper focuses on the challenging task of learning 3D object surface reconstructions from RGB images. Existingmethods achieve varying degrees of success by using different surface representations. However, they all have their own drawbacks,and cannot properly reconstruct the surface shapes of complex topologies, arguably due to a lack of constraints on the topologicalstructures in their learning frameworks. To this end, we propose to learn and use the topology-preserved, skeletal shape representationto assist the downstream task of object surface reconstruction from RGB images. Technically, we propose the novelSkeletonNetdesign that learns a volumetric representation of a skeleton via a bridged learning of a skeletal point set, where we use paralleldecoders each responsible for the learning of points on 1D skeletal curves and 2D skeletal sheets, as well as an efficient module…
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Taxonomy
Topics3D Shape Modeling and Analysis · Human Pose and Action Recognition · Computer Graphics and Visualization Techniques
