AI RESEARCH
Stylized Text-to-Motion Generation via Hypernetwork-Driven Low-Rank Adaptation
arXiv CS.AI
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ArXi:2605.13333v1 Announce Type: cross Text-driven motion diffusion models are capable of generating realistic human motions, but text alone often struggles to express fine-level nuances of motion, commonly referred to as style. Recent approaches have tackled this challenge by attaching a style injection mechanism to a pretrained text-driven diffusion model. Existing stylization methods, however, either require style-specific fine-tuning of existing models or rely on heavy ControlNet-based architectures, limiting efficiency and generalization to unseen styles.