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PD-Flow: A Point Cloud Denoising Framework with Normalizing Flows

About

Point cloud denoising aims to restore clean point clouds from raw observations corrupted by noise and outliers while preserving the fine-grained details. We present a novel deep learning-based denoising model, that incorporates normalizing flows and noise disentanglement techniques to achieve high denoising accuracy. Unlike existing works that extract features of point clouds for point-wise correction, we formulate the denoising process from the perspective of distribution learning and feature disentanglement. By considering noisy point clouds as a joint distribution of clean points and noise, the denoised results can be derived from disentangling the noise counterpart from latent point representation, and the mapping between Euclidean and latent spaces is modeled by normalizing flows. We evaluate our method on synthesized 3D models and real-world datasets with various noise settings. Qualitative and quantitative results show that our method outperforms previous state-of-the-art deep learning-based approaches.

Aihua Mao, Zihui Du, Yu-Hui Wen, Jun Xuan, Yong-Jin Liu• 2022

Related benchmarks

TaskDatasetResultRank
Point Cloud FilteringPCNet (test)
CD0.969
42
Point Cloud FilteringPUNet (test)
Chamfer Distance0.651
42
Point Cloud FilteringPUNet synthetic
CD0.456
36
Point Cloud FilteringPUNet Sparse 10K
Chamfer Distance2.103
36
Point Cloud FilteringPCNet Dense 50K
CD0.988
36
Point Cloud FilteringPCNet synthetic
CD0.727
36
Point Cloud FilteringPUNet Dense 50K
CD0.653
18
Point Cloud FilteringPUNet 50K Dense Laplace noise (synthetic)
CD0.821
18
Point Cloud FilteringPCNet Sparse 10K
CD3.246
18
Point Cloud FilteringPCNet 10K Sparse Laplace noise (synthetic)
CD3.76
18
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