GaussianSlicer: Efficient Surface Reconstruction from Cross-sectional Slices with Gaussian Splatting
Abstract: In this work, we present GaussianSlicer, an efficient plane-based Gaussian Splatting framework for reconstructing geometry from cross-sectional slices input. Unlike previous methods that rely on computationally intensive geometry-based or grid-based implicit techniques, which struggle with complex cases (e.g., sparse slices, multi-hole geometries). GaussianSlicer enables parallel optimization without requiring any prior constraints. Our method begins by initializing planar Gaussians on each slice and optimizing their layout to obtain accurate geometry representation. To align the Gaussian splats, we introduce a geometric regularization that promotes surface smoothness and ensures consistency in global topology. Our system enables accurate 3D reconstruction from sparse, irregular, multi-label slices with high computational efficiency. Experimental results show that, on average, our method is 45.62% faster and achieves a 21.91% improvement in Chamfer Distance (CD) outperforming state-of-the-art methods on the collected dataset.
External IDs:dblp:conf/icassp/GuoQMS25
Loading