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LaS-Comp: Zero-shot 3D Completion with Latent-Spatial Consistency

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This paper introduces LaS-Comp, a zero-shot and category-agnostic approach that leverages the rich geometric priors of 3D foundation models to enable 3D shape completion across diverse types of partial observations. Our contributions are threefold: First, \ourname{} harnesses these powerful generative priors for completion through a complementary two-stage design: (i) an explicit replacement stage that preserves the partial observation geometry to ensure faithful completion; and (ii) an implicit refinement stage ensures seamless boundaries between the observed and synthesized regions. Second, our framework is training-free and compatible with different 3D foundation models. Third, we introduce Omni-Comp, a comprehensive benchmark combining real-world and synthetic data with diverse and challenging partial patterns, enabling a more thorough and realistic evaluation. Both quantitative and qualitative experiments demonstrate that our approach outperforms previous state-of-the-art approaches. Our code and data will be available at \href{https://github.com/DavidYan2001/LaS-Comp}{LaS-Comp}.

Weilong Yan, Haipeng Li, Hao Xu, Nianjin Ye, Yihao Ai, Shuaicheng Liu, Jingyu Hu• 2026

Related benchmarks

TaskDatasetResultRank
3D Shape CompletionSynthetic data (test)
Chamfer Distance (CD)0.61
19
3D Shape CompletionRedwood
CD1.42
10
Shape completionScanNet Chair real scans
UCD0.8
10
3D Shape CompletionOmni-Comp Single Scan
CD2.21
7
3D Shape CompletionOmni-Comp Random Crop
CD2.6
7
3D Shape CompletionOmni-Comp Semantic Part
CD3.3
7
3D Shape CompletionScanNet Table 10 (test)
UCD0.9
7
3D Shape CompletionKITTI-Car 15 (test)
UCD1.4
7
3D Shape CompletionRedwood 5
MMD1.62
4
3D Shape CompletionSynthetic 25, 37
MMD1.2
4
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