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Self-supervised Learning of Dense Shape Correspondence

About

We introduce the first completely unsupervised correspondence learning approach for deformable 3D shapes. Key to our model is the understanding that natural deformations (such as changes in pose) approximately preserve the metric structure of the surface, yielding a natural criterion to drive the learning process toward distortion-minimizing predictions. On this basis, we overcome the need for annotated data and replace it by a purely geometric criterion. The resulting learning model is class-agnostic, and is able to leverage any type of deformable geometric data for the training phase. In contrast to existing supervised approaches which specialize on the class seen at training time, we demonstrate stronger generalization as well as applicability to a variety of challenging settings. We showcase our method on a wide selection of correspondence benchmarks, where we outperform other methods in terms of accuracy, generalization, and efficiency.

Oshri Halimi, Or Litany, Emanuele Rodol\`a, Alex Bronstein, Ron Kimmel• 2018

Related benchmarks

TaskDatasetResultRank
Shape MatchingFAUST (test)
Mean Geodesic Error0.1
85
3D Shape CorrespondenceFAUST remeshed (test)
Mean Geodesic Error (x100)4.8
65
Shape CorrespondenceSCAPE (test)
Shape Correspondence Error0.13
54
Shape MatchingSCAPE remeshed (test)
Mean Geodesic Error (x100)9.6
46
Shape MatchingSHREC19 remeshed (test)
Mean Geodesic Error0.111
37
Near-isometric point cloud matchingSCAPE_r remeshed (test)
Mean Geodesic Error0.16
25
Shape correspondence estimationTOPKIDS
Geodesic Error (x100)38.5
19
Near-isometric shape matchingSCAPE (final 20 shapes)
Pointwise Geodesic Error16
16
Near-isometric shape matchingFAUST (last 20 shapes)
Pointwise Geodesic Error10
16
Non-rigid shape matchingSCAPE
Mean Geodesic Error10
16
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