Neural style transfer for character motion synthesis
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Date
2021
Authors
Ramgovind, Bryce Jiran
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Abstract
In the field of animation, three-dimensional characters are assigned skeletons, or character rigs, to sim ulate the naturalistic movements of their real-world counterparts. Animators manipulate the character
rig to allow for smooth, naturalistic movement. This research proposes using a combination of deep
learning techniques to learn the manifold of human character motion, trained on motion capture data.
The motion manifold is represented by the latent space of the convolutional auto-encoder. This repre sentation is subsequently transferred to any given locomotion, providing a high-quality motion sequence
with a different style. This research builds upon the recent work of neural style transfer for images, but
transports it to a new domain of human character motion. A qualitative study has been conducted on a
group of participants to determine the success of the framework’s ability in transferring style to a newly
synthesised locomotion. Participants were able to recognise stylised aspects within the synthesised loco motions generated from the deep learning framework. An investigation into the relationship between the
amount of style and content on the style transfer constraint is presented. Further, the effect of varying
gaits on the style transfer process between actors running and walking in a normal and zombie style are
investigated. One should view style and content as an inter-related concept. This research provides an in terval of acceptable amounts of style. After a point, the more style placed on the style transfer constraint
does not yield major changes on the newly synthesised locomotion. The zombie stylise motion manifold
took longer to transfer when the actor was running. This research demonstrates that style transfer for
human locomotion is capable
Description
A dissertation submitted in fulfilment of the requirements for the degree Master of Science to the Faculty of Science, School of Computer Science and Applied Mathematics, University of the Witwatersrand, Johannesburg, 2021
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Ramgovind, Bryce Jiran (2021) Neural style transfer for character motion synthesis, University of the Witwatersrand, Johannesburg, <http://hdl.handle.net/10539/32444>