D-LORD for Motion Stylization
Meenakshi Gupta, Mingyuan Lei, Tat-Jen Cham, and Hwee Kuan Lee

TL;DR
D-LORD is a novel framework that disentangles motion representations into class and content, enabling style transfer and retargeting without paired data, demonstrated across multiple datasets.
Contribution
It introduces the first generalized, data-driven motion stylization framework that performs style transfer and retargeting via latent disentanglement without paired data.
Findings
Effective motion style transfer demonstrated on CMU XIA dataset
Successful motion retargeting on MHAD and RRIS datasets
Framework generalizes across different motion styles and content
Abstract
This paper introduces a novel framework named D-LORD (Double Latent Optimization for Representation Disentanglement), which is designed for motion stylization (motion style transfer and motion retargeting). The primary objective of this framework is to separate the class and content information from a given motion sequence using a data-driven latent optimization approach. Here, class refers to person-specific style, such as a particular emotion or an individual's identity, while content relates to the style-agnostic aspect of an action, such as walking or jumping, as universally understood concepts. The key advantage of D-LORD is its ability to perform style transfer without needing paired motion data. Instead, it utilizes class and content labels during the latent optimization process. By disentangling the representation, the framework enables the transformation of one motion sequences…
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Taxonomy
MethodsInstance Normalization · Adaptive Instance Normalization · Focus
