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Investigating Pose Representations and Motion Contexts Modeling for 3D Motion Prediction

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arxiv 2112.15012 v1 pith:EJYJF43X submitted 2021-12-30 cs.CV cs.AIcs.LG

Investigating Pose Representations and Motion Contexts Modeling for 3D Motion Prediction

classification cs.CV cs.AIcs.LG
keywords motionpredictionposelossapproachescontextshumanlong-term
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Predicting human motion from historical pose sequence is crucial for a machine to succeed in intelligent interactions with humans. One aspect that has been obviated so far, is the fact that how we represent the skeletal pose has a critical impact on the prediction results. Yet there is no effort that investigates across different pose representation schemes. We conduct an indepth study on various pose representations with a focus on their effects on the motion prediction task. Moreover, recent approaches build upon off-the-shelf RNN units for motion prediction. These approaches process input pose sequence sequentially and inherently have difficulties in capturing long-term dependencies. In this paper, we propose a novel RNN architecture termed AHMR (Attentive Hierarchical Motion Recurrent network) for motion prediction which simultaneously models local motion contexts and a global context. We further explore a geodesic loss and a forward kinematics loss for the motion prediction task, which have more geometric significance than the widely employed L2 loss. Interestingly, we applied our method to a range of articulate objects including human, fish, and mouse. Empirical results show that our approach outperforms the state-of-the-art methods in short-term prediction and achieves much enhanced long-term prediction proficiency, such as retaining natural human-like motions over 50 seconds predictions. Our codes are released.

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