NeuroMorph: unsupervised shape interpolation and correspondence in one go
We present NeuroMorph, a new neural network architecture that takes as input two 3D shapes and produces in one go, i.e. in a single feed forward pass, a smooth interpolation and point-to-point correspondences between them. The interpolation, expressed as a deformation field, changes the pose of the...
Main Authors: | Eisenberger, M, Novotny, D, Kerchenbaum, G, Labatut, P, Neverova, N, Cremers, D, Vedaldi, A |
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Format: | Conference item |
Language: | English |
Published: |
IEEE
2021
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