Shannan Guan, Haiyan Lu, Linchao Zhu, Gengfa Fang
3D pose estimation has recently gained substantial interests in computer vision domain. Existing 3D pose estimation methods have a strong reliance on large size well-annotated 3D pose datasets, and they suffer poor model generalization on unseen poses due to limited diversity of 3D poses in training sets. In this work, we propose PoseGU, a novel human pose generator that generates diverse poses with access only to a small size of seed samples, while equipping the Counterfactual Risk Minimization to pursue an unbiased evaluation objective. Extensive experiments demonstrate PoseGU outforms almost all the state-of-the-art 3D human pose methods under consideration over three popular benchmark datasets. Empirical analysis also proves PoseGU generates 3D poses with improved data diversity and better generalization ability.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| 3D Human Pose Estimation | MPI-INF-3DHP | AUC | 55.1 | PoseGU |
| 3D Human Pose Estimation | MPI-INF-3DHP | MPJPE | 79.1 | PoseGU |
| 3D Human Pose Estimation | MPI-INF-3DHP | PCK | 86.3 | PoseGU |
| Pose Estimation | MPI-INF-3DHP | AUC | 55.1 | PoseGU |
| Pose Estimation | MPI-INF-3DHP | MPJPE | 79.1 | PoseGU |
| Pose Estimation | MPI-INF-3DHP | PCK | 86.3 | PoseGU |
| 3D | MPI-INF-3DHP | AUC | 55.1 | PoseGU |
| 3D | MPI-INF-3DHP | MPJPE | 79.1 | PoseGU |
| 3D | MPI-INF-3DHP | PCK | 86.3 | PoseGU |
| 1 Image, 2*2 Stitchi | MPI-INF-3DHP | AUC | 55.1 | PoseGU |
| 1 Image, 2*2 Stitchi | MPI-INF-3DHP | MPJPE | 79.1 | PoseGU |
| 1 Image, 2*2 Stitchi | MPI-INF-3DHP | PCK | 86.3 | PoseGU |