CVMar 10, 2025

PersonaBooth: Personalized Text-to-Motion Generation

arXiv:2503.07390v314 citationsh-index: 4CVPR
Originality Incremental advance
AI Analysis

This addresses the need for personalized motion generation in applications like animation or gaming, though it is incremental as it builds on existing motion diffusion models.

The paper tackles the problem of generating personalized motions from text descriptions by introducing a new task called Motion Personalization and a dataset PerMo, with the proposed PersonaBooth method outperforming state-of-the-art motion style transfer methods.

This paper introduces Motion Personalization, a new task that generates personalized motions aligned with text descriptions using several basic motions containing Persona. To support this novel task, we introduce a new large-scale motion dataset called PerMo (PersonaMotion), which captures the unique personas of multiple actors. We also propose a multi-modal finetuning method of a pretrained motion diffusion model called PersonaBooth. PersonaBooth addresses two main challenges: i) A significant distribution gap between the persona-focused PerMo dataset and the pretraining datasets, which lack persona-specific data, and ii) the difficulty of capturing a consistent persona from the motions vary in content (action type). To tackle the dataset distribution gap, we introduce a persona token to accept new persona features and perform multi-modal adaptation for both text and visuals during finetuning. To capture a consistent persona, we incorporate a contrastive learning technique to enhance intra-cohesion among samples with the same persona. Furthermore, we introduce a context-aware fusion mechanism to maximize the integration of persona cues from multiple input motions. PersonaBooth outperforms state-of-the-art motion style transfer methods, establishing a new benchmark for motion personalization.

Foundations

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