Imitation Learning for Human Pose Prediction
About
Modeling and prediction of human motion dynamics has long been a challenging problem in computer vision, and most existing methods rely on the end-to-end supervised training of various architectures of recurrent neural networks. Inspired by the recent success of deep reinforcement learning methods, in this paper we propose a new reinforcement learning formulation for the problem of human pose prediction, and develop an imitation learning algorithm for predicting future poses under this formulation through a combination of behavioral cloning and generative adversarial imitation learning. Our experiments show that our proposed method outperforms all existing state-of-the-art baseline models by large margins on the task of human pose prediction in both short-term predictions and long-term predictions, while also enjoying huge advantage in training speed.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Human Pose Prediction | Human 3.6M Subject 5 (test) | -- | 24 | |
| Human Pose Prediction | Human 3.6M | Purchases Error0.54 | 18 | |
| 3D Pose Forecasting (Joint Angles) | Human3.6M | MAE @ 80ms0.31 | 15 | |
| 3D Human Pose Prediction | Human 3.6M (Subject 5) | Walking MAE (80ms)0.21 | 7 |