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Cascaded Refinement Network for Point Cloud Completion

About

Point clouds are often sparse and incomplete. Existing shape completion methods are incapable of generating details of objects or learning the complex point distributions. To this end, we propose a cascaded refinement network together with a coarse-to-fine strategy to synthesize the detailed object shapes. Considering the local details of partial input with the global shape information together, we can preserve the existing details in the incomplete point set and generate the missing parts with high fidelity. We also design a patch discriminator that guarantees every local area has the same pattern with the ground truth to learn the complicated point distribution. Quantitative and qualitative experiments on different datasets show that our method achieves superior results compared to existing state-of-the-art approaches on the 3D point cloud completion task. Our source code is available at https://github.com/xiaogangw/cascaded-point-completion.git.

Xiaogang Wang, Marcelo H Ang Jr, Gim Hee Lee• 2020

Related benchmarks

TaskDatasetResultRank
Point Cloud CompletionPCN (test)
Watercraft8.05
60
Point Cloud CompletionKITTI
MMD0.872
42
Point Cloud CompletionMVP (test)
Avg Chamfer Distance (x10^4)7.34
34
Point Cloud CompletionKITTI (test)
MMD0.872
33
Point Cloud CompletionShapeNet seen categories
Airplane Error6.44
32
Point Cloud CompletionCompletion3D (test)
Airplane Score3.38
28
Shape completionMVP 1.0 (test)
CD4.3
24
3D Point Cloud CompletionCompletion3D
Average Chamfer Distance (L2)9.21
14
Point Cloud CompletionMVP (val)
CD-l26.64
14
Shape completionShapeNet
Average CD8
13
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