SpaceControl: Introducing Test-Time Spatial Control to 3D Generative Modeling
By: Elisabetta Fedele , Francis Engelmann , Ian Huang and more
Generative methods for 3D assets have recently achieved remarkable progress, yet providing intuitive and precise control over the object geometry remains a key challenge. Existing approaches predominantly rely on text or image prompts, which often fall short in geometric specificity: language can be ambiguous, and images are cumbersome to edit. In this work, we introduce SpaceControl, a training-free test-time method for explicit spatial control of 3D generation. Our approach accepts a wide range of geometric inputs, from coarse primitives to detailed meshes, and integrates seamlessly with modern pre-trained generative models without requiring any additional training. A controllable parameter lets users trade off between geometric fidelity and output realism. Extensive quantitative evaluation and user studies demonstrate that SpaceControl outperforms both training-based and optimization-based baselines in geometric faithfulness while preserving high visual quality. Finally, we present an interactive user interface that enables online editing of superquadrics for direct conversion into textured 3D assets, facilitating practical deployment in creative workflows. Find our project page at https://spacecontrol3d.github.io/
Similar Papers
Canvas3D: Empowering Precise Spatial Control for Image Generation with Constraints from a 3D Virtual Canvas
Human-Computer Interaction
Lets you perfectly place things in AI pictures.
SPATIALGEN: Layout-guided 3D Indoor Scene Generation
CV and Pattern Recognition
Builds realistic 3D rooms from pictures.
Controllable 3D Object Generation with Single Image Prompt
CV and Pattern Recognition
Creates 3D objects from pictures, not just words.