CVAIDec 5, 2024

D-LORD for Motion Stylization

arXiv:2412.04097v1h-index: 38IEEE Transactions on Systems, Man, and Cybernetics: Systems
Originality Highly original
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It addresses motion style transfer and retargeting for applications like animation or robotics, presenting a first generalized framework in this area.

The paper tackles motion stylization by introducing D-LORD, a framework that disentangles class and content information from motion sequences using latent optimization, enabling style transfer without paired data and demonstrating efficacy on three datasets.

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 style to another's style using Adaptive Instance Normalization. The proposed D-LORD framework is designed with a focus on generalization, allowing it to handle different class and content labels for various applications. Additionally, it can generate diverse motion sequences when specific class and content labels are provided. The framework's efficacy is demonstrated through experimentation on three datasets: the CMU XIA dataset for motion style transfer, the MHAD dataset, and the RRIS Ability dataset for motion retargeting. Notably, this paper presents the first generalized framework for motion style transfer and motion retargeting, showcasing its potential contributions in this area.

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