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Discrete Rotation Equivariance for Point Cloud Recognition

31 March 2019
Jiaxin Li
Yingcai Bi
Gim Hee Lee
    3DPC
ArXiv (abs)PDFHTMLGithub (23★)
Abstract

Despite the recent active research on processing point clouds with deep networks, few attention has been on the sensitivity of the networks to rotations. In this paper, we propose a deep learning architecture that achieves discrete SO(2)\mathbf{SO}(2)SO(2)/SO(3)\mathbf{SO}(3)SO(3) rotation equivariance for point cloud recognition. Specifically, the rotation of an input point cloud with elements of a rotation group is similar to shuffling the feature vectors generated by our approach. The equivariance is easily reduced to invariance by eliminating the permutation with operations such as maximum or average. Our method can be directly applied to any existing point cloud based networks, resulting in significant improvements in their performance for rotated inputs. We show state-of-the-art results in the classification tasks with various datasets under both SO(2)\mathbf{SO}(2)SO(2) and SO(3)\mathbf{SO}(3)SO(3) rotations. In addition, we further analyze the necessary conditions of applying our approach to PointNet based networks. Source codes at https://github.com/lijx10/rot-equ-net

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