蒙特卡罗光线跟踪的去噪自适应采样

A. Firmino, J. Frisvad, H. Jensen
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引用次数: 0

摘要

蒙特卡罗渲染是一项计算密集型任务,但结合最近基于深度学习的图像去噪进展,可以在更短的时间内获得高质量的图像。我们提出了一种新的自适应采样技术,结合基于深度学习的去噪,进一步提高了蒙特卡罗渲染的效率。我们提出的技术是通用的,可以与现有的预训练去噪器相结合,并且与以前的技术相比,它本身不需要任何额外的神经网络或学习。我们工作的一个关键贡献是估计输入为随机变量的神经网络输出方差的一般方法。我们的方法迭代地呈现额外的样本,并使用这种新的方差估计来计算每个后续迭代的样本分布。与均匀采样和以前的自适应采样技术相比,我们的方法在所有测试场景中都获得了更好的等时误差,并且当与最近的去噪后校正技术相结合时,实现了更快的误差收敛。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Denoising-Aware Adaptive Sampling for Monte Carlo Ray Tracing
Monte Carlo rendering is a computationally intensive task, but combined with recent deep-learning based advances in image denoising it is possible to achieve high quality images in a shorter amount of time. We present a novel adaptive sampling technique that further improves the efficiency of Monte Carlo rendering combined with deep-learning based denoising. Our proposed technique is general, can be combined with existing pre-trained denoisers, and, in contrast with previous techniques, does not itself require any additional neural networks or learning. A key contribution of our work is a general method for estimating the variance of the outputs of a neural network whose inputs are random variables. Our method iteratively renders additional samples and uses this novel variance estimate to compute the sample distribution for each subsequent iteration. Compared to uniform sampling and previous adaptive sampling techniques, our method achieves better equal-time error in all scenes tested, and when combined with a recent denoising post-correction technique, significantly faster error convergence is realized.
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