MIND: Material Interface Generation from UDFs for Non-Manifold Surface Reconstruction
Xuhui Chen, Fei Hou, Wencheng Wang, Hong Qin, Ying He

TL;DR
MIND introduces a novel method to generate non-manifold meshes directly from UDFs by deriving a multi-labeled spatial partitioning, enabling accurate surface extraction of complex structures that previous methods struggled with.
Contribution
The paper presents a new algorithm for extracting non-manifold meshes from UDFs using a multi-labeled global field, addressing limitations of local SDF-based methods.
Findings
Robustly handles complex non-manifold surfaces.
Outperforms existing methods on diverse datasets.
Enables direct non-manifold mesh extraction from UDFs.
Abstract
Unsigned distance fields (UDFs) are widely used in 3D deep learning due to their ability to represent shapes with arbitrary topology. While prior work has largely focused on learning UDFs from point clouds or multi-view images, extracting meshes from UDFs remains challenging, as the learned fields rarely attain exact zero distances. A common workaround is to reconstruct signed distance fields (SDFs) locally from UDFs to enable surface extraction via Marching Cubes. However, this often introduces topological artifacts such as holes or spurious components. Moreover, local SDFs are inherently incapable of representing non-manifold geometry, leading to complete failure in such cases. To address this gap, we propose MIND (Material Interface from Non-manifold Distance fields), a novel algorithm for generating material interfaces directly from UDFs, enabling non-manifold mesh extraction from a…
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Taxonomy
TopicsDiamond and Carbon-based Materials Research · Laser-induced spectroscopy and plasma · Plasma Diagnostics and Applications
