NeuRodin: A Two-stage Framework for High-Fidelity Neural Surface Reconstruction

Neural Information Processing Systems 

Signed Distance Function (SDF)-based volume rendering has demonstrated significant capabilities in surface reconstruction. Although promising, SDF-based methods often fail to capture detailed geometric structures, resulting in visible defects. By comparing SDF-based volume rendering to density-based volume rendering, we identify two main factors within the SDF-based approach that degrade surface quality: SDF-to-density representation and geometric regularization . These factors introduce challenges that hinder the optimization of the SDF field.