路径导向的神经参数混合

Honghao Dong, Guoping Wang, Sheng Li
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引用次数: 0

摘要

先前的路径引导技术通常依赖于空间细分结构来近似目标的方向分布,这可能导致无法捕获空间方向相关性并引入视差问题。在本文中,我们提出了神经参数混合(NPM),一种用于路径引导算法目标分布编码的神经公式。我们建议使用连续和紧凑的神经隐式表示来编码参数模型,同时通过轻量级神经网络解码它们。然后,我们推导了一种基于梯度的优化策略,使用带噪声的蒙特卡罗辐射估计直接训练NPM的参数。我们的方法有效地为路径引导建模目标分布(入射辐射或积分式),并通过更准确地捕获空间方向相关性优于先前的引导方法。此外,我们的方法具有更高的训练效率,并且适用于现代gpu上的并行化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Parametric Mixtures for Path Guiding
Previous path guiding techniques typically rely on spatial subdivision structures to approximate directional target distributions, which may cause failure to capture spatio-directional correlations and introduce parallax issue. In this paper, we present Neural Parametric Mixtures (NPM), a neural formulation to encode target distributions for path guiding algorithms. We propose to use a continuous and compact neural implicit representation for encoding parametric models while decoding them via lightweight neural networks. We then derive a gradient-based optimization strategy to directly train the parameters of NPM with noisy Monte Carlo radiance estimates. Our approach efficiently models the target distribution (incident radiance or the product integrand) for path guiding, and outperforms previous guiding methods by capturing the spatio-directional correlations more accurately. Moreover, our approach is more training efficient and is practical for parallelization on modern GPUs.
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