G2P: Gaussian-to-Point Attribute Alignment for Boundary-Aware 3D Semantic Segmentation
By: Hojun Song , Chae-yeong Song , Jeong-hun Hong and more
Potential Business Impact:
Helps computers see and sort 3D objects better.
Semantic segmentation on point clouds is critical for 3D scene understanding. However, sparse and irregular point distributions provide limited appearance evidence, making geometry-only features insufficient to distinguish objects with similar shapes but distinct appearances (e.g., color, texture, material). We propose Gaussian-to-Point (G2P), which transfers appearance-aware attributes from 3D Gaussian Splatting to point clouds for more discriminative and appearance-consistent segmentation. Our G2P address the misalignment between optimized Gaussians and original point geometry by establishing point-wise correspondences. By leveraging Gaussian opacity attributes, we resolve the geometric ambiguity that limits existing models. Additionally, Gaussian scale attributes enable precise boundary localization in complex 3D scenes. Extensive experiments demonstrate that our approach achieves superior performance on standard benchmarks and shows significant improvements on geometrically challenging classes, all without any 2D or language supervision.
Similar Papers
GAP: Gaussianize Any Point Clouds with Text Guidance
CV and Pattern Recognition
Makes plain 3D shapes look real with words.
PointGauss: Point Cloud-Guided Multi-Object Segmentation for Gaussian Splatting
CV and Pattern Recognition
Lets computers quickly separate objects in 3D.
Domain-aware Category-level Geometry Learning Segmentation for 3D Point Clouds
CV and Pattern Recognition
Teaches 3D scanners to recognize objects anywhere.