论文标题
GAN2X:图像gan的非陆层逆渲染
GAN2X: Non-Lambertian Inverse Rendering of Image GANs
论文作者
论文摘要
2D图像是对3D物理世界的观察,该世界描绘了几何,材料和照明组件。从2D图像(也称为逆渲染)中恢复这些基本的内在组件通常需要有监督的设置,并从多个观点和照明条件中收集的配对图像,这是资源要求的。在这项工作中,我们提出了GAN2X,这是一种无监督的逆渲染方法,仅使用未配对的图像进行培训。与以前主要关注3D形状的形状从GAN方法不同,我们首次尝试通过利用GAN生成的伪配对数据来恢复非lambertian材料属性。为了实现精确的反渲染,我们设计了一种镜面感知的神经表面表示,该表示的几何和材料特性不断建模。采用基于阴影的改进技术来进一步提炼目标图像中的信息并恢复更多细节。实验表明,GAN2X可以准确地将2D图像分解为不同对象类别的3D形状,反照率和镜面特性,并实现无监督的单视图3D面部重建的最先进性能。我们还显示了其在下游任务中的应用,包括真实图像编辑和将2D GAN提升到分解的3D gans。
2D images are observations of the 3D physical world depicted with the geometry, material, and illumination components. Recovering these underlying intrinsic components from 2D images, also known as inverse rendering, usually requires a supervised setting with paired images collected from multiple viewpoints and lighting conditions, which is resource-demanding. In this work, we present GAN2X, a new method for unsupervised inverse rendering that only uses unpaired images for training. Unlike previous Shape-from-GAN approaches that mainly focus on 3D shapes, we take the first attempt to also recover non-Lambertian material properties by exploiting the pseudo paired data generated by a GAN. To achieve precise inverse rendering, we devise a specularity-aware neural surface representation that continuously models the geometry and material properties. A shading-based refinement technique is adopted to further distill information in the target image and recover more fine details. Experiments demonstrate that GAN2X can accurately decompose 2D images to 3D shape, albedo, and specular properties for different object categories, and achieves the state-of-the-art performance for unsupervised single-view 3D face reconstruction. We also show its applications in downstream tasks including real image editing and lifting 2D GANs to decomposed 3D GANs.