G-MSM: Unsupervised Multi-Shape Matching with Graph-based Affinity Priors
About
We present G-MSM (Graph-based Multi-Shape Matching), a novel unsupervised learning approach for non-rigid shape correspondence. Rather than treating a collection of input poses as an unordered set of samples, we explicitly model the underlying shape data manifold. To this end, we propose an adaptive multi-shape matching architecture that constructs an affinity graph on a given set of training shapes in a self-supervised manner. The key idea is to combine putative, pairwise correspondences by propagating maps along shortest paths in the underlying shape graph. During training, we enforce cycle-consistency between such optimal paths and the pairwise matches which enables our model to learn topology-aware shape priors. We explore different classes of shape graphs and recover specific settings, like template-based matching (star graph) or learnable ranking/sorting (TSP graph), as special cases in our framework. Finally, we demonstrate state-of-the-art performance on several recent shape correspondence benchmarks, including real-world 3D scan meshes with topological noise and challenging inter-class pairs.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Non-rigid shape matching | SCAPE | Mean Geodesic Error1.8 | 16 | |
| Non-rigid shape matching | SURREAL | Mean Geodesic Correspondence Error2.1 | 11 | |
| Non-rigid shape matching | Faust | Mean Geodesic Error1.5 | 11 | |
| Non-rigid shape matching | FAUST SCAPE (train test) | Mean Geodesic Error2.1 | 10 | |
| Non-rigid shape matching | SCAPE FAUST (train test) | Mean Geodesic Error1.5 | 10 |