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Controllable Motion Synthesis and Reconstruction with Autoregressive Diffusion Models

Authors :
Yin, Wenjie
Tu, Ruibo
Yin, Hang
Kragic, Danica
Kjellström, Hedvig
Björkman, Mårten
Yin, Wenjie
Tu, Ruibo
Yin, Hang
Kragic, Danica
Kjellström, Hedvig
Björkman, Mårten
Publication Year :
2023

Abstract

Data-driven and controllable human motion synthesis and prediction are active research areas with various applications in interactive media and social robotics. Challenges remain in these fields for generating diverse motions given past observations and dealing with imperfect poses. This paper introduces MoDiff, an autoregressive probabilistic diffusion model over motion sequences conditioned on control contexts of other modalities. Our model integrates a cross-modal Transformer encoder and a Transformer-based decoder, which are found effective in capturing temporal correlations in motion and control modalities. We also introduce a new data dropout method based on the diffusion forward process to provide richer data representations and robust generation. We demonstrate the superior performance of MoDiff in controllable motion synthesis for locomotion with respect to two baselines and show the benefits of diffusion data dropout for robust synthesis and reconstruction of high-fidelity motion close to recorded data.<br />Part of proceedings ISBN 979-8-3503-3670-2QC 20240110

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1428120324
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1109.RO-MAN57019.2023.10309317