AI RESEARCH

Kimodo: Scaling Controllable Human Motion Generation

arXiv CS.CV

ArXi:2603.15546v1 Announce Type: new High-quality human motion data is becoming increasingly important for applications in robotics, simulation, and entertainment. Recent generative models offer a potential data source, enabling human motion synthesis through intuitive inputs like text prompts or kinematic constraints on poses. However, the small scale of public mocap datasets has limited the motion quality, control accuracy, and generalization of these models. In this work, we