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Schlagwörter:
Computer Science, Computer Vision and Pattern Recognition, cs.CV,Computer Science, Computational Geometry, cs.CG
Zusammenfassung:
We introduce a supervised-learning framework for non-rigid point set
alignment of a new kind - Displacements on Voxels Networks (DispVoxNets) -
which abstracts away from the point set representation and regresses 3D
displacement fields on regularly sampled proxy 3D voxel grids. Thanks to
recently released collections of deformable objects with known intra-state
correspondences, DispVoxNets learn a deformation model and further priors
(e.g., weak point topology preservation) for different object categories such
as cloths, human bodies and faces. DispVoxNets cope with large deformations,
noise and clustered outliers more robustly than the state-of-the-art. At test
time, our approach runs orders of magnitude faster than previous techniques.
All properties of DispVoxNets are ascertained numerically and qualitatively in
extensive experiments and comparisons to several previous methods.