We propose a learning-based method for light-path construction in path tracing algorithms, which iteratively optimizes and samples from what we refer to as spatio-directional Gaussian mixture models (SDMMs). In particular, we approximate incident radiance as an online-trained $5$D mixture that is accelerated by a $k$D-tree. Using the same framework, we approximate BSDFs as pre-trained $n$D mixtures, where $n$ is the number of BSDF parameters. Such an approach addresses two major challenges in path-guiding models. First, the $5$D radiance representation naturally captures correlation between the spatial and directional dimensions. Such correlations are present in e.g. parallax and caustics. Second, by using a tangent-space parameterization of Gaussians, our spatio-directional mixtures can perform approximate product sampling with arbitrarily oriented BSDFs. Existing models are only able to do this by either foregoing anisotropy of the mixture components or by representing the radiance field in local (normal aligned) coordinates, which both make the radiance field more difficult to learn. An additional benefit of the tangent-space parameterization is that each individual Gaussian is mapped to the solid sphere with low distortion near its center of mass. Our method performs especially well on scenes with small, localized luminaires that induce high spatio-directional correlation in the incident radiance.
翻译:在路径追踪算法中,我们建议一种基于学习的光路构造方法,用于在路径追踪算法中进行光路构造,这种算法迭接地优化和样本,来自我们所说的spatio-directal Gaussian 混合模型(SDMMs)的样本。特别是,我们把事件光度比为在线训练的5美元D混合物,由美元D树加速。我们利用同样的框架,我们把BSDFFs比为预先训练的美元D混合物,其中美元是BSDF参数的数量。这种方法解决了路径引导模型中的两大挑战。首先,5美元D光亮代表自然地捕捉到空间和方向层面之间的相关关系。例如,Pallax和custics。第二,我们用高亮度-空间的参数参数参数化,用任意定向的BSDFFS进行产品取样。现有的模型只能通过放弃混合物组件的反色调或在当地(正常的)坐标坐标中代表更亮的场,这种关联关系存在于例如paralaxax和cal-ral climcal climcal climation 中心,这使得我们每个地面的地平面都更难学习到每个地面的地平面的地平面的地平流法。