March 19, 2024, 4:49 a.m. | Jiaxiang Tang, Ruijie Lu, Xiaokang Chen, Xiang Wen, Gang Zeng, Ziwei Liu

cs.CV updates on arXiv.org arxiv.org

arXiv:2403.11878v1 Announce Type: new
Abstract: Text-to-texture synthesis has become a new frontier in 3D content creation thanks to the recent advances in text-to-image models. Existing methods primarily adopt a combination of pretrained depth-aware diffusion and inpainting models, yet they exhibit shortcomings such as 3D inconsistency and limited controllability. To address these challenges, we introduce InteX, a novel framework for interactive text-to-texture synthesis. 1) InteX includes a user-friendly interface that facilitates interaction and control throughout the synthesis process, enabling region-specific repainting …

abstract advances arxiv become challenges combination cs.cv diffusion image inpainting interactive synthesis text text-to-image texture type via

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