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  4. Learning Trajectory Dependencies for Human Motion Prediction
 
conference paper

Learning Trajectory Dependencies for Human Motion Prediction

Mao, Wei
•
Liu, Miaomiao
•
Salzmann, Mathieu  
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January 1, 2019
2019 Ieee/Cvf International Conference On Computer Vision (Iccv 2019)
IEEE/CVF International Conference on Computer Vision (ICCV)

Human motion prediction, i.e., forecasting future body poses given observed pose sequence, has typically been tackled with recurrent neural networks (RNNs). However, as evidenced by prior work, the resulted RNN models suffer from prediction errors accumulation, leading to undesired discontinuities in motion prediction. In this paper, we propose a simple feed-forward deep network for motion prediction, which takes into account both temporal smoothness and spatial dependencies among human body joints. In this context, we then propose to encode temporal information by working in trajectory space, instead of the traditionally-used pose space. This alleviates us from manually defining the range of temporal dependencies (or temporal convolutional filter size, as done in previous work). Moreover, spatial dependency of human pose is encoded by treating a human pose as a generic graph (rather than a human skeletal kinematic tree) formed by links between every pair of body joints. Instead of using a pre-defined graph structure, we design a new graph convolutional network to learn graph connectivity automatically. This allows the network to capture long range dependencies beyond that of human kinematic tree. We evaluate our approach on several standard benchmark datasets for motion prediction, including Human3.6M, the CMU motion capture dataset and 3DPW. Our experiments clearly demonstrate that the proposed approach achieves state of the art performance, and is applicable to both angle-based and position-based pose representations. The code is available at https: //github.com/wei-mao- 2019/LearnTrajDep

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Type
conference paper
DOI
10.1109/ICCV.2019.00958
Web of Science ID

WOS:000548549204061

Author(s)
Mao, Wei
Liu, Miaomiao
Salzmann, Mathieu  
Li, Hongdong
Date Issued

2019-01-01

Publisher

IEEE

Publisher place

New York

Published in
2019 Ieee/Cvf International Conference On Computer Vision (Iccv 2019)
ISBN of the book

978-1-7281-4803-8

Series title/Series vol.

IEEE International Conference on Computer Vision

Start page

9488

End page

9496

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
CVLAB  
Event nameEvent placeEvent date
IEEE/CVF International Conference on Computer Vision (ICCV)

Seoul, SOUTH KOREA

Oct 27-Nov 02, 2019

Available on Infoscience
August 6, 2020
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/170643
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