3D-aware image synthesis aims at learning a generative model that can render photo-realistic 2D images while capturing decent underlying 3D shapes. A popular solution is to adopt the generative adversarial network (GAN) and replace the generator with a 3D renderer, where volume rendering with neural radiance field (NeRF) is commonly used. Despite the advancement of synthesis quality, existing methods fail to obtain moderate 3D shapes. We argue that, considering the two-player game in the formulation of GANs, only making the generator 3D-aware is not enough. In other words, displacing the generative mechanism only offers the capability, but not the guarantee, of producing 3D-aware images, because the supervision of the generator primarily comes from the discriminator. To address this issue, we propose GeoD through learning a geometry-aware discriminator to improve 3D-aware GANs. Concretely, besides differentiating real and fake samples from the 2D image space, the discriminator is additionally asked to derive the geometry information from the inputs, which is then applied as the guidance of the generator. Such a simple yet effective design facilitates learning substantially more accurate 3D shapes. Extensive experiments on various generator architectures and training datasets verify the superiority of GeoD over state-of-the-art alternatives. Moreover, our approach is registered as a general framework such that a more capable discriminator (i.e., with a third task of novel view synthesis beyond domain classification and geometry extraction) can further assist the generator with a better multi-view consistency.
翻译:3D-aware 图像合成 3D 旨在学习一个可以让图像现实化 2D 图像同时捕捉体面的 3D 形状的基因化模型。 一个流行的解决方案是采用基因对抗网络(GAN),用3D 转换器取代生成器, 使用神经光度场( NERF) 进行体积转换。 尽管合成质量有所提高, 现有方法未能获得中度 3D 形状。 我们争辩说, 考虑到GAN 的配制中两个玩家游戏, 仅仅让发电机多D-awa 产生多功能的图像是不够的。 换换基因机制只能提供超出3D-aware 分类的域, 而不是保证生成3D 图像的能力, 因为对生成器的监督主要来自导师。 为了解决这个问题, 我们建议GeoD, 学习一个地质测量-aware 3D 形状来改进3D GANs。 具体地说, 除了将真实和假的样本与 2D 图像空间区分之外, 歧视器还被要求进一步从输入第三种的地球测量信息, 然后将它应用为更精确的地理-D 高级的模型的模型的模型的定位, 。 这样简单的模型的校正统化模型的校正的校正的校正的校正的校正的校正的校正的校 。