U-CAN: Unsupervised Point Cloud Denoising with Consistency-Aware Noise2Noise Matching

Junsheng Zhou1*      Xingyu Shi1*      Haichuan Song2      Yi Fang3      Yu-Shen Liu1      Zhizhong Han4

* Equal Contribution

1School of Software, Tsinghua University, 2East China Normal University,
3New York University Abu Dhabi, 4Wayne State University

Abstract

Point clouds captured by scanning sensors are often perturbed by noise, which have a highly negative impact on downstream tasks (e.g. surface reconstruction and shape understanding). Previous works mostly focus on training neural networks with noisy-clean point cloud pairs for learning denoising priors, which requires extensively manual efforts. In this work, we introduce U-CAN, an Unsupervised framework for point cloud denoising with Consistency-Aware Noise2Noise matching. Specifically, we leverage a neural network to infer a multi-step denoising path for each point of a shape or scene with a noise to noise matching schema. We achieve this by a novel loss which enables statistical reasoning on multiple noisy point cloud observations. We further introduce a novel constraint on the denoised geometry consistency for learning consistency-aware denoising patterns. We justify that the proposed constraint is a general term which is not limited to 3D domain and can also contribute to the area of 2D image denoising. Our evaluations under the widely used benchmarks in point cloud denoising, upsampling and image denoising show significant improvement over the state-of-the-art unsupervised methods, where U-CAN also produces comparable results with the supervised methods.

Visualization Results

Point Cloud Denoising Results

Point Cloud Upsampling Results

Denoising Results

PUNet:

Noisy DMR-Un Score-Un Ours

Different types of noise:

Impulsive Noise

Noisy DMR-Un Score-Un Ours

Uniform Noise

Noisy DMR-Un Score-Un Ours

LiDAR Noise

Noisy DMR-Un Score-Un Ours

Visual Comparisons

Ours
DIP
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BM3D
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ZS-N2N
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Noisy
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