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4 months ago

PCN: Point Completion Network

Wentao Yuan; Tejas Khot; David Held; Christoph Mertz; Martial Hebert

PCN: Point Completion Network

Abstract

Shape completion, the problem of estimating the complete geometry of objects from partial observations, lies at the core of many vision and robotics applications. In this work, we propose Point Completion Network (PCN), a novel learning-based approach for shape completion. Unlike existing shape completion methods, PCN directly operates on raw point clouds without any structural assumption (e.g. symmetry) or annotation (e.g. semantic class) about the underlying shape. It features a decoder design that enables the generation of fine-grained completions while maintaining a small number of parameters. Our experiments show that PCN produces dense, complete point clouds with realistic structures in the missing regions on inputs with various levels of incompleteness and noise, including cars from LiDAR scans in the KITTI dataset.

Code Repositories

wentaoyuan/pcn
Official
tf
Mentioned in GitHub
qinglew/PCN
pytorch
Mentioned in GitHub
vinits5/learning3d
pytorch
Mentioned in GitHub
Yan-Xia/ASFM-Net
tf
Mentioned in GitHub
qinglew/PCN-PyTorch
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
point-cloud-completion-on-completion3dPCN
Chamfer Distance: 18.22(?)
point-cloud-completion-on-shapenetPCN
Chamfer Distance: 9.636
Chamfer Distance L2: 4.016
F-Score@1%: 0.695

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