3D scene stylization aims at generating stylized images of the scene from arbitrary novel views following a given set of style examples, while ensuring consistency when rendered from different views. Directly applying methods for image or video stylization to 3D scenes cannot achieve such consistency. Thanks to recently proposed neural radiance fields (NeRF), we are able to represent a 3D scene in a consistent way. Consistent 3D scene stylization can be effectively achieved by stylizing the corresponding NeRF. However, there is a significant domain gap between style examples which are 2D images and NeRF which is an implicit volumetric representation. To address this problem, we propose a novel mutual learning framework for 3D scene stylization that combines a 2D image stylization network and NeRF to fuse the stylization ability of 2D stylization network with the 3D consistency of NeRF. We first pre-train a standard NeRF of the 3D scene to be stylized and replace its color prediction module with a style network to obtain a stylized NeRF. It is followed by distilling the prior knowledge of spatial consistency from NeRF to the 2D stylization network through an introduced consistency loss. We also introduce a mimic loss to supervise the mutual learning of the NeRF style module and fine-tune the 2D stylization decoder. In order to further make our model handle ambiguities of 2D stylization results, we introduce learnable latent codes that obey the probability distributions conditioned on the style. They are attached to training samples as conditional inputs to better learn the style module in our novel stylized NeRF. Experimental results demonstrate that our method is superior to existing approaches in both visual quality and long-range consistency.
翻译:3D 场景Stylization 旨在根据一组特定风格示例的任意新视角生成场景的立体图像, 并确保从不同观点获得一致性。 直接将图像或视频Styliz化方法应用到 3D 场景无法实现一致性。 由于最近提议的神经光亮场( NERF), 我们能够以一致的方式代表三D 场景。 一致的三D 场景Styliz化可以通过对相应的 NeRF 进行立体格式化来有效实现。 但是, 在2D 图像和 NeRF 等风格示例之间, 存在巨大的域域域间差异, 而 NeRF 则是隐含体型的缩放风格。 为了解决这个问题, 我们提议为 3D 图像Stylorization 图像Stylation 和 NeRF 3 模型的配置能力, 将2 3D 的立体化能力与 3D 3D 一致结合起来。 我们先将一个标准 NeF 的当前Syldrealalalization 模式转换成, 以进一步的颜色预测网络, 以获得Sylviald Refrefildal化的精化。 。 我们的Sylal deal deal dex lex levelyalalalal dex 。