Generating Smooth Pose Sequences for Diverse Human Motion Prediction

ICCV 2021  ·  Wei Mao, Miaomiao Liu, Mathieu Salzmann ·

Recent progress in stochastic motion prediction, i.e., predicting multiple possible future human motions given a single past pose sequence, has led to producing truly diverse future motions and even providing control over the motion of some body parts. However, to achieve this, the state-of-the-art method requires learning several mappings for diversity and a dedicated model for controllable motion prediction. In this paper, we introduce a unified deep generative network for both diverse and controllable motion prediction. To this end, we leverage the intuition that realistic human motions consist of smooth sequences of valid poses, and that, given limited data, learning a pose prior is much more tractable than a motion one. We therefore design a generator that predicts the motion of different body parts sequentially, and introduce a normalizing flow based pose prior, together with a joint angle loss, to achieve motion realism.Our experiments on two standard benchmark datasets, Human3.6M and HumanEva-I, demonstrate that our approach outperforms the state-of-the-art baselines in terms of both sample diversity and accuracy. The code is available at https://github.com/wei-mao-2019/gsps

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Human Pose Forecasting AMASS GSPS ADE 0.563 # 2
FDE 0.613 # 3
APD 12.465 # 2
Human Pose Forecasting Human3.6M GSPS APD 14757 # 4
ADE 389 # 5
FDE 496 # 5
MMADE 476 # 5
MMFDE 525 # 5
CMD 10.758 # 3
FID 2.103 # 4

Results from Other Papers


Task Dataset Model Metric Name Metric Value Rank Source Paper Compare
Human Pose Forecasting HumanEva-I GSPS APD@2000ms 5825 # 4
ADE@2000ms 233 # 4
FDE@2000ms 244 # 4

Methods


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