Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
Abstract: Recent advances in text-driven 3D scene editing and stylization, which
leverage the powerful capabilities of 2D generative models, have demonstrated
promising outcomes. However, challenges remain in ensuring high-quality
stylization and view consistency simultaneously. Moreover, applying style
consistently to different regions or objects in the scene with semantic
correspondence is a challenging task. To address these limitations, we
introduce techniques that enhance the quality of 3D stylization while
maintaining view consistency and providing optional region-controlled style
transfer. Our method achieves stylization by re-training an initial 3D
representation using stylized multi-view 2D images of the source views.
Therefore, ensuring both style consistency and view consistency of stylized
multi-view images is crucial. We achieve this by extending the style-aligned
depth-conditioned view generation framework, replacing the fully shared
attention mechanism with a single reference-based attention-sharing mechanism,
which effectively aligns style across different viewpoints. Additionally,
inspired by recent 3D inpainting methods, we utilize a grid of multiple depth
maps as a single-image reference to further strengthen view consistency among
stylized images. Finally, we propose Multi-Region Importance-Weighted Sliced
Wasserstein Distance Loss, allowing styles to be applied to distinct image
regions using segmentation masks from off-the-shelf models. We demonstrate that
this optional feature enhances the faithfulness of style transfer and enables
the mixing of different styles across distinct regions of the scene.
Experimental evaluations, both qualitative and quantitative, demonstrate that
our pipeline effectively improves the results of text-driven 3D stylization.