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Parametric Point Cloud Completion for Polygonal Surface Reconstruction

About

Existing polygonal surface reconstruction methods heavily depend on input completeness and struggle with incomplete point clouds. We argue that while current point cloud completion techniques may recover missing points, they are not optimized for polygonal surface reconstruction, where the parametric representation of underlying surfaces remains overlooked. To address this gap, we introduce parametric completion, a novel paradigm for point cloud completion, which recovers parametric primitives instead of individual points to convey high-level geometric structures. Our presented approach, PaCo, enables high-quality polygonal surface reconstruction by leveraging plane proxies that encapsulate both plane parameters and inlier points, proving particularly effective in challenging scenarios with highly incomplete data. Comprehensive evaluations of our approach on the ABC dataset establish its effectiveness with superior performance and set a new standard for polygonal surface reconstruction from incomplete data. Project page: https://parametric-completion.github.io.

Zhaiyu Chen, Yuqing Wang, Liangliang Nan, Xiao Xiang Zhu• 2025

Related benchmarks

TaskDatasetResultRank
Point Cloud CompletionABC
CD1.87
21
Polygonal Surface ReconstructionABC-plane
CD1.87
21
Building reconstructionBuilding-PCC
Chamfer Distance4.47
15
Point Cloud CompletionABC-multi (100 random samples)
Total Params41.4
15
Point Cloud CompletionABC Moderate (-50% incompleteness)
CD1.66
7
Point Cloud CompletionABC Hard (-75% incompleteness)
Chamfer Distance2.43
7
Primitive Parameter RecoveryABC
NCprim97.6
7
Point Cloud CompletionABC Simple (-25% incompleteness)
Chamfer Distance1.52
7
Surface ReconstructionABC
CD1.87
6
Surface SimplificationABC 50 randomly selected samples
CD1.72
3
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