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Papers/PointMixup: Augmentation for Point Clouds

PointMixup: Augmentation for Point Clouds

Yunlu Chen, Vincent Tao Hu, Efstratios Gavves, Thomas Mensink, Pascal Mettes, Pengwan Yang, Cees G. M. Snoek

2020-08-14ECCV 2020 83D Point Cloud Data AugmentationData Augmentation3D Point Cloud ClassificationPoint Cloud Classification
PaperPDFCode(official)

Abstract

This paper introduces data augmentation for point clouds by interpolation between examples. Data augmentation by interpolation has shown to be a simple and effective approach in the image domain. Such a mixup is however not directly transferable to point clouds, as we do not have a one-to-one correspondence between the points of two different objects. In this paper, we define data augmentation between point clouds as a shortest path linear interpolation. To that end, we introduce PointMixup, an interpolation method that generates new examples through an optimal assignment of the path function between two point clouds. We prove that our PointMixup finds the shortest path between two point clouds and that the interpolation is assignment invariant and linear. With the definition of interpolation, PointMixup allows to introduce strong interpolation-based regularizers such as mixup and manifold mixup to the point cloud domain. Experimentally, we show the potential of PointMixup for point cloud classification, especially when examples are scarce, as well as increased robustness to noise and geometric transformations to points. The code for PointMixup and the experimental details are publicly available.

Results

TaskDatasetMetricValueModel
Shape Representation Of 3D Point CloudsModelNet40-CError Rate0.193PointNet++/+PointMixup
3D Point Cloud ClassificationModelNet40-CError Rate0.193PointNet++/+PointMixup
Point Cloud ClassificationPointCloud-Cmean Corruption Error (mCE)1.028PointMixUp (PointNet++)
3D Point Cloud ReconstructionModelNet40-CError Rate0.193PointNet++/+PointMixup

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