Decomposing a scene into its shape, reflectance and illumination is a fundamental problem in computer vision and graphics. Neural approaches such as NeRF have achieved remarkable success in view synthesis, but do not explicitly perform decomposition and instead operate exclusively on radiance (the product of reflectance and illumination). Extensions to NeRF, such as NeRD, can perform decomposition but struggle to accurately recover detailed illumination, thereby significantly limiting realism. We propose a novel reflectance decomposition network that can estimate shape, BRDF, and per-image illumination given a set of object images captured under varying illumination. Our key technique is a novel illumination integration network called Neural-PIL that replaces a costly illumination integral operation in the rendering with a simple network query. In addition, we also learn deep low-dimensional priors on BRDF and illumination representations using novel smooth manifold auto-encoders. Our decompositions can result in considerably better BRDF and light estimates enabling more accurate novel view-synthesis and relighting compared to prior art. Project page: https://markboss.me/publication/2021-neural-pil/
翻译:将场景分解成其形状、反射和光化是计算机视觉和图形的根本问题。 NeRF 等神经方法在视觉合成中取得了显著的成功,但并未明确进行分解,而是完全在光线上(反光和光照的产品)运行。 NERD 等 NERF 的扩展可以进行分解,但努力准确恢复详细的光化,从而大大限制现实主义。我们提议建立一个新型反射分解网络,可以对形状、BRDF 和在各种光照下捕捉的一组物体图像进行估测。我们的关键技术是一个名为Neural-PIL 的新型照明整合网络,它用简单的网络查询取代昂贵的照明整体操作。此外,我们还学习了RRDF 和光化演示的深度低维度前科,并使用新的光滑的多个自动校正。我们的解析可以大大改进BRDF和光度估计,使得与以前的艺术相比,能够更精确地进行新的同步和重新显示。项目页面: https://pubres/pubasmambos/pubres/pubrammemamus-nuralation。