Papers
arxiv:2509.18090

GeoSVR: Taming Sparse Voxels for Geometrically Accurate Surface Reconstruction

Published on Sep 22
· Submitted by Jiahe Li on Sep 24
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Abstract

GeoSVR, a voxel-based framework, improves surface reconstruction accuracy and detail using sparse voxels with depth constraints and surface regularization.

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Reconstructing accurate surfaces with radiance fields has achieved remarkable progress in recent years. However, prevailing approaches, primarily based on Gaussian Splatting, are increasingly constrained by representational bottlenecks. In this paper, we introduce GeoSVR, an explicit voxel-based framework that explores and extends the under-investigated potential of sparse voxels for achieving accurate, detailed, and complete surface reconstruction. As strengths, sparse voxels support preserving the coverage completeness and geometric clarity, while corresponding challenges also arise from absent scene constraints and locality in surface refinement. To ensure correct scene convergence, we first propose a Voxel-Uncertainty Depth Constraint that maximizes the effect of monocular depth cues while presenting a voxel-oriented uncertainty to avoid quality degradation, enabling effective and robust scene constraints yet preserving highly accurate geometries. Subsequently, Sparse Voxel Surface Regularization is designed to enhance geometric consistency for tiny voxels and facilitate the voxel-based formation of sharp and accurate surfaces. Extensive experiments demonstrate our superior performance compared to existing methods across diverse challenging scenarios, excelling in geometric accuracy, detail preservation, and reconstruction completeness while maintaining high efficiency. Code is available at https://github.com/Fictionarry/GeoSVR.

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Geometric Sparse-Voxel Reconstruction, abbreviated as GeoSVR, delivers high-quality surface reconstruction for intricate real-world scenes based on explicit sparse voxels, with uncertainty quantified depth constraint and voxel surface regularization. It exhibits superiority in the previous rough, inaccurate, or incomplete recovery problems, excelling in delicate details capturing with high completeness and top-tier efficiency.

Github repository: https://github.com/Fictionarry/GeoSVR

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