MongeNet: Efficient Sampler for Geometric Deep Learning
About
Recent advances in geometric deep-learning introduce complex computational challenges for evaluating the distance between meshes. From a mesh model, point clouds are necessary along with a robust distance metric to assess surface quality or as part of the loss function for training models. Current methods often rely on a uniform random mesh discretization, which yields irregular sampling and noisy distance estimation. In this paper we introduce MongeNet, a fast and optimal transport based sampler that allows for an accurate discretization of a mesh with better approximation properties. We compare our method to the ubiquitous random uniform sampling and show that the approximation error is almost half with a very small computational overhead.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Watertight Mesh Reconstruction | Noisy Point Clouds Bull | CHD0.095 | 2 | |
| Watertight Mesh Reconstruction | Noisy Point Clouds Giraffe | CHD (Chamfer Distance)0.637 | 2 | |
| Watertight Mesh Reconstruction | Noisy Point Clouds Guitar | CHD0.051 | 2 | |
| Watertight Mesh Reconstruction | Noisy Point Clouds Tiki | CHD0.096 | 2 | |
| Watertight Mesh Reconstruction | Noisy Point Clouds Triceratops | CHD0.074 | 2 | |
| Watertight Mesh Reconstruction | Noisy Point Clouds | CHD0.191 | 2 |