Model-based Deep Hand Pose Estimation
About
Previous learning based hand pose estimation methods does not fully exploit the prior information in hand model geometry. Instead, they usually rely a separate model fitting step to generate valid hand poses. Such a post processing is inconvenient and sub-optimal. In this work, we propose a model based deep learning approach that adopts a forward kinematics based layer to ensure the geometric validity of estimated poses. For the first time, we show that embedding such a non-linear generative process in deep learning is feasible for hand pose estimation. Our approach is verified on challenging public datasets and achieves state-of-the-art performance.
Xingyi Zhou, Qingfu Wan, Wei Zhang, Xiangyang Xue, Yichen Wei• 2016
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Hand Pose Estimation | NYU (test) | Mean Error (mm)17.04 | 100 | |
| 3D Hand Pose Estimation | ICVL (test) | Mean Error (mm)11.56 | 91 | |
| Hand Pose Estimation | NYU (test) | 3D Error (mm)16.9 | 25 | |
| 3D Hand Pose Estimation | NYU | Mean Distance Error (mm)17.04 | 19 | |
| 3D Hand Pose Estimation | ICVL | Mean Distance Error (mm)11.56 | 17 |
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