GaussianUDF: Inferring Unsigned Distance Functions through 3D Gaussian Splatting
By: Shujuan Li, Yu-Shen Liu, Zhizhong Han
Potential Business Impact:
Makes 3D models from pictures more accurate.
Reconstructing open surfaces from multi-view images is vital in digitalizing complex objects in daily life. A widely used strategy is to learn unsigned distance functions (UDFs) by checking if their appearance conforms to the image observations through neural rendering. However, it is still hard to learn continuous and implicit UDF representations through 3D Gaussians splatting (3DGS) due to the discrete and explicit scene representation, i.e., 3D Gaussians. To resolve this issue, we propose a novel approach to bridge the gap between 3D Gaussians and UDFs. Our key idea is to overfit thin and flat 2D Gaussian planes on surfaces, and then, leverage the self-supervision and gradient-based inference to supervise unsigned distances in both near and far area to surfaces. To this end, we introduce novel constraints and strategies to constrain the learning of 2D Gaussians to pursue more stable optimization and more reliable self-supervision, addressing the challenges brought by complicated gradient field on or near the zero level set of UDFs. We report numerical and visual comparisons with the state-of-the-art on widely used benchmarks and real data to show our advantages in terms of accuracy, efficiency, completeness, and sharpness of reconstructed open surfaces with boundaries.
Similar Papers
Accurate and Complete Surface Reconstruction from 3D Gaussians via Direct SDF Learning
CV and Pattern Recognition
Makes 3D models from pictures more accurate.
Uncertainty-Aware Normal-Guided Gaussian Splatting for Surface Reconstruction from Sparse Image Sequences
CV and Pattern Recognition
Makes 3D pictures look real even with few photos.
DiGS: Accurate and Complete Surface Reconstruction from 3D Gaussians via Direct SDF Learning
CV and Pattern Recognition
Creates detailed 3D models from photos.