OriNet: A Fully Convolutional Network for 3D Human Pose Estimation
About
In this paper, we propose a fully convolutional network for 3D human pose estimation from monocular images. We use limb orientations as a new way to represent 3D poses and bind the orientation together with the bounding box of each limb region to better associate images and predictions. The 3D orientations are modeled jointly with 2D keypoint detections. Without additional constraints, this simple method can achieve good results on several large-scale benchmarks. Further experiments show that our method can generalize well to novel scenes and is robust to inaccurate bounding boxes.
Chenxu Luo, Xiao Chu, Alan Yuille• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Human Pose Estimation | MPI-INF-3DHP (test) | PCK83.8 | 559 | |
| 3D Human Pose Estimation | Human3.6M (test) | MPJPE (Average)46.6 | 547 | |
| 3D Human Pose Estimation | Human3.6M (Protocol #1) | MPJPE (Avg.)76 | 440 | |
| 3D Human Pose Estimation | Human3.6M (Protocol 2) | Average MPJPE46.6 | 315 | |
| 3D Human Pose Estimation | Human3.6M | -- | 160 | |
| 3D Human Pose Estimation | Human3.6M Protocol #2 (test) | Average Error46.6 | 140 | |
| 3D Human Pose Estimation | MPI-INF-3DHP | PCK (Overall)65.7 | 17 | |
| 3D Human Pose Estimation | MPI-INF-3DHP Universal, height-normalized skeletons 1.0/2.0 (test) | PCK (Stand/walk)95.5 | 8 |
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