2022
DOI: 10.48550/arxiv.2204.01159
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Shape-Pose Disentanglement using SE(3)-equivariant Vector Neurons

Abstract: We introduce an unsupervised technique for encoding point clouds into a canonical shape representation, by disentangling shape and pose. Our encoder is stable and consistent, meaning that the shape encoding is purely pose-invariant, while the extracted rotation and translation are able to semantically align different input shapes of the same class to a common canonical pose. Specifically, we design an auto-encoder based on Vector Neuron Networks, a rotation-equivariant neural network, whose layers we extend to… Show more

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