Recently neural volumetric representations such as neural reflectance fields have been widely applied to faithfully reproduce the appearance of real-world objects and scenes under novel viewpoints and lighting conditions. However, it remains challenging and time-consuming to render such representations under complex lighting such as environment maps, which requires individual ray marching towards each single light to calculate the transmittance at every sampled point. In this paper, we propose a novel method based on precomputed Neural Transmittance Functions to accelerate the rendering of neural reflectance fields. Our neural transmittance functions enable us to efficiently query the transmittance at an arbitrary point in space along an arbitrary ray without tedious ray marching, which effectively reduces the time-complexity of the rendering. We propose a novel formulation for the neural transmittance function, and train it jointly with the neural reflectance fields on images captured under collocated camera and light, while enforcing monotonicity. Results on real and synthetic scenes demonstrate almost two order of magnitude speedup for renderings under environment maps with minimal accuracy loss.
翻译:最近神经反射场等神经体积表现方式被广泛用于忠实复制在新观点和照明条件下真实世界物体和场景的外观,然而,在环境图等复杂光线下进行这种展示仍然具有挑战性和耗时性,因为环境图等复杂光线要求单向每个光线,以计算每个取样点的传输情况。在本文件中,我们提出了一个基于预先计算神经转换功能的新颖方法,以加速神经反射场的形成。我们的神经传输功能使我们能够在无枯燥的射线行进中,在任意的射线时,在空间任意点对传输进行高效查询,从而有效减少图像的时间复杂性。我们提出了神经传输功能的新配方,并与在相近的相机和光下拍摄的图像的神经反射场一起培训,同时实施单调。关于真实和合成场的结果表明,在环境图下绘制的速率极小的速率几乎达到两个数量级。