论文标题
Anifacegan:可动画3D吸引的面部图像生成视频化身
AniFaceGAN: Animatable 3D-Aware Face Image Generation for Video Avatars
论文作者
论文摘要
尽管2D生成模型在面部图像的产生和动画方面取得了长足的进步,但它们通常会遭受从不同的摄像机观点呈现图像时3D不一致之类的不良伪像。这样可以防止它们综合视频动画与真实的动画无法区分。最近,3D感知的甘斯通过利用3D场景表示形式扩展了2D gans,以明确地脱离相机姿势。这些方法可以很好地保留跨不同视图中生成的图像的3D一致性,但是它们无法对其他属性实现细粒度的控制,其中面部表达控制可以说是面部动画最有用和最可取的。在本文中,我们提出了一个动画3D感知的gan,以使多视each量一致的面部动画生成。关键思想是将3D感知gan的3D表示形式分解为模板场和变形场,其中前者代表具有规范表达式的不同身份,后者则表征了每个身份的表达变化。为了通过变形实现对面部表情的有意义的控制,我们在对3D感知gan的对抗训练期间提出了生成器和参数3D面模型之间的3D级模拟学习方案。这有助于我们的方法获得具有强大视觉3D一致性的高质量动画面部图像生成,即使仅接受非结构化的2D图像训练。广泛的实验证明了我们优于先前工作的表现。项目页面:https://yuewuhkust.github.io/anifacegan
Although 2D generative models have made great progress in face image generation and animation, they often suffer from undesirable artifacts such as 3D inconsistency when rendering images from different camera viewpoints. This prevents them from synthesizing video animations indistinguishable from real ones. Recently, 3D-aware GANs extend 2D GANs for explicit disentanglement of camera pose by leveraging 3D scene representations. These methods can well preserve the 3D consistency of the generated images across different views, yet they cannot achieve fine-grained control over other attributes, among which facial expression control is arguably the most useful and desirable for face animation. In this paper, we propose an animatable 3D-aware GAN for multiview consistent face animation generation. The key idea is to decompose the 3D representation of the 3D-aware GAN into a template field and a deformation field, where the former represents different identities with a canonical expression, and the latter characterizes expression variations of each identity. To achieve meaningful control over facial expressions via deformation, we propose a 3D-level imitative learning scheme between the generator and a parametric 3D face model during adversarial training of the 3D-aware GAN. This helps our method achieve high-quality animatable face image generation with strong visual 3D consistency, even though trained with only unstructured 2D images. Extensive experiments demonstrate our superior performance over prior works. Project page: https://yuewuhkust.github.io/AniFaceGAN