Efficient convolutional hierarchical autoencoder for human motion prediction

Human motion prediction is a challenging problem due to the complicated human body constraints and high-dimensional dynamics. Recent deep learning approaches adopt RNN, CNN or fully connected networks to learn the motion features which do not fully exploit the hierarchical structure of human anatomy. To address this problem, we propose a convolutional hierarchical autoencoder model for motion prediction with a novel encoder which incorporates 1D convolutional layers and hierarchical topology. The new network is more efficient compared to the existing deep learning models with respect to size and speed. We train the generic model on Human3.6M and CMU benchmark and conduct extensive experiments. The qualitative and quantitative results show that our model outperforms the state-of-the-art methods in both short-term prediction and long-term prediction.
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Bibliographic Details
Subjects:
Notations:training science technical and natural sciences
Tagging:maschinelles Lernen deep learning
Published in:The Visual Computer
Language:English
Published: 2019
Online Access:https://doi.org/10.1007/s00371-019-01692-9
Volume:35
Issue:6-8
Pages:1143-1156
Document types:article
Level:advanced