RynnWorld-4D: A Generative 4D World Model for Robotic Manipulation Using RGB-Depth-Flow Representations
Robotic manipulation in the open world requires not only recognizing what a scene looks like, but also anticipating how its 3D structure moves under interaction. We argue that synchronized RGB…
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