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Morphing and Sampling Network for Dense Point Cloud Completion

About

3D point cloud completion, the task of inferring the complete geometric shape from a partial point cloud, has been attracting attention in the community. For acquiring high-fidelity dense point clouds and avoiding uneven distribution, blurred details, or structural loss of existing methods' results, we propose a novel approach to complete the partial point cloud in two stages. Specifically, in the first stage, the approach predicts a complete but coarse-grained point cloud with a collection of parametric surface elements. Then, in the second stage, it merges the coarse-grained prediction with the input point cloud by a novel sampling algorithm. Our method utilizes a joint loss function to guide the distribution of the points. Extensive experiments verify the effectiveness of our method and demonstrate that it outperforms the existing methods in both the Earth Mover's Distance (EMD) and the Chamfer Distance (CD).

Minghua Liu, Lu Sheng, Sheng Yang, Jing Shao, Shi-Min Hu• 2019

Related benchmarks

TaskDatasetResultRank
Point Cloud CompletionPCN (test)
Watercraft9.9
60
Point Cloud CompletionKITTI
MMD2.259
42
Point Cloud CompletionMVP (test)
Avg Chamfer Distance (x10^4)7.98
34
Point Cloud CompletionKITTI (test)
MMD2.259
33
Point Cloud CompletionShapeNet seen categories
Airplane Error5.6
32
Shape completionMVP 1.0 (test)
CD4.9
24
Point Cloud CompletionPCN--
23
Point Cloud CompletionShapeNet (test)
EMD (Airplane)0.252
20
Shape completionShapeNet
Average CD4.758
13
Point Cloud CompletionShapeNet-ViPC (known categories)
Avg Score0.578
13
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