Photo-realistic free-viewpoint rendering of real-world scenes using classical computer graphics techniques is challenging, because it requires the difficult step of capturing detailed appearance and geometry models. Recent studies have demonstrated promising results by learning scene representations that implicitly encode both geometry and appearance without 3D supervision. However, existing approaches in practice often show blurry renderings caused by the limited network capacity or the difficulty in finding accurate intersections of camera rays with the scene geometry. Synthesizing high-resolution imagery from these representations often requires time-consuming optical ray marching. In this work, we introduce Neural Sparse Voxel Fields (NSVF), a new neural scene representation for fast and high-quality free-viewpoint rendering. NSVF defines a set of voxel-bounded implicit fields organized in a sparse voxel octree to model local properties in each cell. We progressively learn the underlying voxel structures with a differentiable ray-marching operation from only a set of posed RGB images. With the sparse voxel octree structure, rendering novel views can be accelerated by skipping the voxels containing no relevant scene content. Our method is typically over 10 times faster than the state-of-the-art (namely, NeRF(Mildenhall et al., 2020)) at inference time while achieving higher quality results. Furthermore, by utilizing an explicit sparse voxel representation, our method can easily be applied to scene editing and scene composition. We also demonstrate several challenging tasks, including multi-scene learning, free-viewpoint rendering of a moving human, and large-scale scene rendering. Code and data are available at our website: https://github.com/facebookresearch/NSVF.
翻译:使用古典计算机图形技术对真实世界场景进行摄影现实自由摄像显示是富有挑战性的,因为它要求采取获取详细外观和几何模型的艰难步骤。最近的研究通过学习隐含几何和外观的外观隐含地编码的场景演示,显示了令人乐观的结果。然而,在实践中,现有方法往往显示网络能力有限或难以找到摄影机光线与现场几何的准确交叉点造成的模糊变化。在这些演示中合成高分辨率的图像往往需要花费时间的光学射线行进。在这项工作中,我们引入了Neural Sprose Voxel Foxel Ffields(NSVFFF),这是一个新的神经场场景展示,用于快速和高质量的自由视点。NSVFFFF定义了一组由稀疏少的 voxel 隐含的隐形场景场景,以每个细胞的本地特性为模型。我们逐渐从一组高清晰的图像中学习到一组RGB图像。 利用稀释的Voxtrefor 结构结构, 将新观点用于快速地显示我们最清晰的图像。