A stochastic conditioning scheme for diverse human motion prediction

Date

Authors

Aliakbarian, Sadegh
Saleh, Fatemeh Sadat
Salzmann, Mathieu
Petersson, Lars
Gould, Stephen

Journal Title

Journal ISSN

Volume Title

Publisher

Access Statement

Research Projects

Organizational Units

Journal Issue

Abstract

Human motion prediction, the task of predicting future 3D human poses given a sequence of observed ones, has been mostly treated as a deterministic problem. However, human motion is a stochastic process: Given an observed sequence of poses, multiple future motions are plausible. Existing approaches to modeling this stochasticity typically combine a random noise vector with information about the previous poses. This combination, however, is done in a deterministic manner, which gives the network the flexibility to learn to ignore the random noise. Alternatively, in this paper, we propose to stochastically combine the root of variations with previous pose information, so as to force the model to take the noise into account. We exploit this idea for motion prediction by incorporating it into a recurrent encoder-decoder network with a conditional variational autoencoder block that learns to exploit the perturbations. Our experiments on two large-scale motion prediction datasets demonstrate that our model yields high-quality pose sequences that are much more diverse than those from state-of-the-art stochastic motion prediction techniques.

Description

Keywords

Citation

Source

Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition

Book Title

Entity type

Publication

Access Statement

License Rights

Restricted until