2022
DOI: 10.48550/arxiv.2211.03420
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Moving Frame Net: SE(3)-Equivariant Network for Volumes

Abstract: Equivariance of neural networks to transformations helps to improve their performance and reduce generalization error in computer vision tasks, as they apply to datasets presenting symmetries (e.g. scalings, rotations, translations). The method of moving frames is classical for deriving operators invariant to the action of a Lie group in a manifold. Recently, a rotation and translation equivariant neural network for image data was proposed based on the moving frames approach. In this paper we significantly imp… Show more

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