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C3DPO: Canonical 3D Pose Networks for Non-Rigid Structure From Motion

About

We propose C3DPO, a method for extracting 3D models of deformable objects from 2D keypoint annotations in unconstrained images. We do so by learning a deep network that reconstructs a 3D object from a single view at a time, accounting for partial occlusions, and explicitly factoring the effects of viewpoint changes and object deformations. In order to achieve this factorization, we introduce a novel regularization technique. We first show that the factorization is successful if, and only if, there exists a certain canonicalization function of the reconstructed shapes. Then, we learn the canonicalization function together with the reconstruction one, which constrains the result to be consistent. We demonstrate state-of-the-art reconstruction results for methods that do not use ground-truth 3D supervision for a number of benchmarks, including Up3D and PASCAL3D+. Source code has been made available at https://github.com/facebookresearch/c3dpo_nrsfm.

David Novotny, Nikhila Ravi, Benjamin Graham, Natalia Neverova, Andrea Vedaldi• 2019

Related benchmarks

TaskDatasetResultRank
3D Human Pose EstimationHuman3.6M (test)--
547
3D Human Pose EstimationH3.6M (val)--
8
3D ReconstructionUP3D 79KP (test)
MPJPE0.067
6
3D ReconstructionPASCAL3D+ (test)
MPJPE36.6
6
2D-3D LiftingSurreal (test)
NE (%)0.3509
3
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