Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

PF-Net: Point Fractal Network for 3D Point Cloud Completion

About

In this paper, we propose a Point Fractal Network (PF-Net), a novel learning-based approach for precise and high-fidelity point cloud completion. Unlike existing point cloud completion networks, which generate the overall shape of the point cloud from the incomplete point cloud and always change existing points and encounter noise and geometrical loss, PF-Net preserves the spatial arrangements of the incomplete point cloud and can figure out the detailed geometrical structure of the missing region(s) in the prediction. To succeed at this task, PF-Net estimates the missing point cloud hierarchically by utilizing a feature-points-based multi-scale generating network. Further, we add up multi-stage completion loss and adversarial loss to generate more realistic missing region(s). The adversarial loss can better tackle multiple modes in the prediction. Our experiments demonstrate the effectiveness of our method for several challenging point cloud completion tasks.

Zitian Huang, Yikuan Yu, Jiawen Xu, Feng Ni, Xinyi Le• 2020

Related benchmarks

TaskDatasetResultRank
Point Cloud CompletionShapeNet-34 (seen categories)
Chamfer Distance (S)3.16
50
Point Cloud CompletionShapeNet-55 (test)
CD-M3.87
44
Point Cloud CompletionKITTI
MMD0.792
42
Point Cloud CompletionShapeNet-34 unseen categories
CD (Symmetric)5.29
37
Point Cloud CompletionKITTI (test)
MMD0.792
33
Point Cloud CompletionShapeNet-55
CD-L2 (Average)5.22
18
Point Cloud CompletionShapeNet-ViPC (known categories)
Avg Score0.551
13
Point Cloud CompletionShapeNet-55 (Simple split)
CD-S3.83
9
Point Cloud CompletionShapeNet 55 (Hard split)
Chamfer Distance - Hard7.97
9
Point Cloud CompletionShapeNet-ViPC Novel categories (test)
F-Score@0.001 (Avg)46.8
8
Showing 10 of 15 rows

Other info

Follow for update