Map2World: Segment Map Conditioned Text to 3D World Generation
Summary
Generates full 3D worlds from user-drawn segment maps, then adds fine detail with a separate enhancement network. Uses priors from existing asset generators to generalize across domains with limited training data. If you care about simulation, robotics, or game tools, this is a blueprint for controllable world generation. ([huggingface.co](https://huggingface.co/papers/2605.00781))
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