论文标题
光子驱动的神经路径引导
Photon-Driven Neural Path Guiding
论文作者
论文摘要
尽管蒙特卡洛路径追踪是一种简单有效的算法来综合照片现实图像,但在涉及复杂的全局照明时,汇聚到无噪声结果通常非常慢。路径指导是最成功的差异技术之一,它可以学习更好的分布,以减少像素噪声的重要性采样。但是,以前的方法需要大量的路径样本才能获得可靠的路径指南。我们提出了一种新型的神经路径指导方法,该方法可以使用离线训练的神经网络重建从稀疏样本的路径指导的高质量采样分布。我们利用从光源追踪的光子作为采样密度重建的输入,这对于具有强大的全球照明的挑战场景非常有效。为了充分利用我们的深神经网络,我们将场景空间划分为自适应分层网格,在该网格中,我们将网络应用于现场任何局部区域的高质量采样分布。这允许在路径跟踪中任何位置的任何位置的路径弹跳高效指导。我们证明,我们的光子驱动的神经路径指导方法可以很好地概括在训练中未见的各种挑战性测试场景上。与以前的最先进的路径指南方法相比,我们的方法实现了测试场景的渲染结果。
Although Monte Carlo path tracing is a simple and effective algorithm to synthesize photo-realistic images, it is often very slow to converge to noise-free results when involving complex global illumination. One of the most successful variance-reduction techniques is path guiding, which can learn better distributions for importance sampling to reduce pixel noise. However, previous methods require a large number of path samples to achieve reliable path guiding. We present a novel neural path guiding approach that can reconstruct high-quality sampling distributions for path guiding from a sparse set of samples, using an offline trained neural network. We leverage photons traced from light sources as the input for sampling density reconstruction, which is highly effective for challenging scenes with strong global illumination. To fully make use of our deep neural network, we partition the scene space into an adaptive hierarchical grid, in which we apply our network to reconstruct high-quality sampling distributions for any local region in the scene. This allows for highly efficient path guiding for any path bounce at any location in path tracing. We demonstrate that our photon-driven neural path guiding method can generalize well on diverse challenging testing scenes that are not seen in training. Our approach achieves significantly better rendering results of testing scenes than previous state-of-the-art path guiding methods.