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📄 Abstract
Abstract: 3D Gaussian Splatting (3DGS) has enabled the creation of highly realistic 3D
scene representations from sets of multi-view images. However, inpainting
missing regions, whether due to occlusion or scene editing, remains a
challenging task, often leading to blurry details, artifacts, and inconsistent
geometry. In this work, we introduce SplatFill, a novel depth-guided approach
for 3DGS scene inpainting that achieves state-of-the-art perceptual quality and
improved efficiency. Our method combines two key ideas: (1) joint depth-based
and object-based supervision to ensure inpainted Gaussians are accurately
placed in 3D space and aligned with surrounding geometry, and (2) we propose a
consistency-aware refinement scheme that selectively identifies and corrects
inconsistent regions without disrupting the rest of the scene. Evaluations on
the SPIn-NeRF dataset demonstrate that SplatFill not only surpasses existing
NeRF-based and 3DGS-based inpainting methods in visual fidelity but also
reduces training time by 24.5%. Qualitative results show our method delivers
sharper details, fewer artifacts, and greater coherence across challenging
viewpoints.