Kimodo:可扩展的可控人体运动生成 / Kimodo: Scaling Controllable Human Motion Generation
1️⃣ 一句话总结
这篇论文提出了一个名为Kimodo的大规模人体运动生成模型,它通过使用海量动作捕捉数据和创新的两阶段去噪架构,能够根据文字描述或多种身体姿态约束,高质量、高精度地生成可控的人体动作。
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 introduce Kimodo, an expressive and controllable kinematic motion diffusion model trained on 700 hours of optical motion capture data. Our model generates high-quality motions while being easily controlled through text and a comprehensive suite of kinematic constraints including full-body keyframes, sparse joint positions/rotations, 2D waypoints, and dense 2D paths. This is enabled through a carefully designed motion representation and two-stage denoiser architecture that decomposes root and body prediction to minimize motion artifacts while allowing for flexible constraint conditioning. Experiments on the large-scale mocap dataset justify key design decisions and analyze how the scaling of dataset size and model size affect performance.
Kimodo:可扩展的可控人体运动生成 / Kimodo: Scaling Controllable Human Motion Generation
这篇论文提出了一个名为Kimodo的大规模人体运动生成模型,它通过使用海量动作捕捉数据和创新的两阶段去噪架构,能够根据文字描述或多种身体姿态约束,高质量、高精度地生成可控的人体动作。
源自 arXiv: 2603.15546