Recent history has seen a tremendous growth of work exploring implicit representations of geometry and radiance, popularized through Neural Radiance Fields (NeRF). Such works are fundamentally based on a (implicit) {\em volumetric} representation of occupancy, allowing them to model diverse scene structure including translucent objects and atmospheric obscurants. But because the vast majority of real-world scenes are composed of well-defined surfaces, we introduce a {\em surface} analog of such implicit models called Neural Reflectance Surfaces (NeRS). NeRS learns a neural shape representation of a closed surface that is diffeomorphic to a sphere, guaranteeing water-tight reconstructions. Even more importantly, surface parameterizations allow NeRS to learn (neural) bidirectional surface reflectance functions (BRDFs) that factorize view-dependent appearance into environmental illumination, diffuse color (albedo), and specular "shininess." Finally, rather than illustrating our results on synthetic scenes or controlled in-the-lab capture, we assemble a novel dataset of multi-view images from online marketplaces for selling goods. Such "in-the-wild" multi-view image sets pose a number of challenges, including a small number of views with unknown/rough camera estimates. We demonstrate that surface-based neural reconstructions enable learning from such data, outperforming volumetric neural rendering-based reconstructions. We hope that NeRS serves as a first step toward building scalable, high-quality libraries of real-world shape, materials, and illumination. The project page with code and video visualizations can be found at https://jasonyzhang.com/ners}{jasonyzhang.com/ners.
翻译:近代史上, 探索隐含的几何和亮度的工程有了巨大的增长, 通过神经半径场( NERF) 得到了普及。 这种工程基本上基于( 隐含的) 体积占有权, 允许它们建模多样的场景结构, 包括透明天体和大气隐含物。 但是由于大多数真实世界场景都由定义明确的表面组成, 我们引入了一个“ 表面” 类似隐含的模型, 称为神经反射表面( NERS ) 。 NERS 学会了封闭表面的神经形状, 向一个球体的变异性到一个球体, 保证了对水的重整。 更重要的是, 地表参数允许 NERS 学习( 隐性) 双向表面反射功能( BRDFs ), 将视向外观的外观作为环境污染、 分散的颜色( 隐形) 和 直观的“ 直观” 。 最后, 而不是以合成表面/ 直观的表面捕捉为我们的基础的图像/, 我们从在线的图像中, 将多向内置的图像的图像的图像的图像的图像向向向前置的图像显示, 展示, 展示的图像的图像的图像显示, 。