RaNeuS: Ray-adaptive Neural Surface Reconstruction
Yida Wang, David Joseph Tan, Nassir Navab, Federico Tombari

TL;DR
RaNeuS introduces an adaptive, ray-wise regularization method for neural surface reconstruction that significantly improves the capture of small-scale details in 3D models, outperforming previous SDF-based approaches.
Contribution
The paper proposes a novel adaptive regularization technique for SDF in neural surface reconstruction, enhancing detail preservation and rendering accuracy.
Findings
Achieves state-of-the-art results on synthetic datasets.
Outperforms prior methods in geometric reconstruction.
Effectively captures small-scale surface details.
Abstract
Our objective is to leverage a differentiable radiance field \eg NeRF to reconstruct detailed 3D surfaces in addition to producing the standard novel view renderings. There have been related methods that perform such tasks, usually by utilizing a signed distance field (SDF). However, the state-of-the-art approaches still fail to correctly reconstruct the small-scale details, such as the leaves, ropes, and textile surfaces. Considering that different methods formulate and optimize the projection from SDF to radiance field with a globally constant Eikonal regularization, we improve with a ray-wise weighting factor to prioritize the rendering and zero-crossing surface fitting on top of establishing a perfect SDF. We propose to adaptively adjust the regularization on the signed distance field so that unsatisfying rendering rays won't enforce strong Eikonal regularization which is…
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Taxonomy
TopicsOptical Imaging and Spectroscopy Techniques · Computer Graphics and Visualization Techniques · Optical Polarization and Ellipsometry
