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) 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 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.
翻译:近代史上, 探索隐含的几何和亮度表现的工程大幅增长, 通过神经半径场( NERF) 普及。 这种工程基本上基于( 隐含的) 体积显示占用量, 允许它们建模不同的场景结构, 包括透明天体和大气隐蔽物。 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模拟的隐含模型, 叫做神经反射表面( NERS ) 。 NERS 学习了一个封闭表面的神经形状表示, 它的表面面面貌表现为二度变异形, 保证水力重整。 更重要的是, 地表参数化可以让 NERS 学习( 内向) 双向表面反射功能( BRDFS ), 将视景的外观变成环境污染、 弥散的颜色( 紫外色) 。 最后, 我们从基于合成的场景或实验室的捕获, 我们从在线市场的多视图像中收集了一个新的数据集,, 向着一个不为真实的图像的图像重建,, 以未知的图面的图面的图像显示了,, 以历史的图层的图层的图层的图层的图像显示的图, 以显示, 以显示的图的图的图象的图层的图的图的图 以显示的图 。