AI RESEARCH
IAM: Identity-Aware Human Motion and Shape Joint Generation
arXiv CS.CV
•
ArXi:2604.25164v1 Announce Type: new Recent advances in text-driven human motion generation enable models to synthesize realistic motion sequences from natural language descriptions. However, most existing approaches assume identity-neutral motion and generate movements using a canonical body representation, ignoring the strong influence of body morphology on motion dynamics. In practice, attributes such as body proportions, mass distribution, and age significantly affect how actions are performed, and neglecting this coupling often leads to physically inconsistent motions.