路径引导的多重重要性重加权

IF 7.8 1区 计算机科学 Q1 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Zhimin Fan, Yiming Wang, Chenxi Zhou, Ling-Qi Yan, Yanwen Guo, Jie Guo
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引用次数: 0

摘要

现代路径引导采用迭代训练方案来拟合亮度分布。然而,现有的方法仅在图像空间内结合每次迭代产生的估计,忽略了单个光路上分布拟合收敛的差异。本文将估计组合任务表述为一个路径重加权过程。为了计算空间方向变化的组合权重,我们提出了多重重要性重加权,利用多次引导迭代的重要性分布。我们证明了我们提出的路径级重加权使引导算法对分布中的噪声和过拟合不那么敏感。这有助于在空间上和时间上(即迭代)对样本进行更精细的细分,从而进一步提高分布和样本的准确性。受自适应多重重要抽样(AMIS)的启发,我们引入了一种简单而有效的基于混合的加权方案,理论上保证了一致性,与其他加权方案相比,显示了良好的实际性能。为了进一步促进高样本率的使用,我们引入了一个控制样本存储大小的超参数。当超过此大小限制时,在渲染过程中会溅落低值样本,并使用分布的部分混合重新加权。我们发现限制存储大小可以减少内存开销,并保持方差减少和偏差与无限制的相当。我们的方法在很大程度上与底层引导方法无关,并与传统的像素重加权技术兼容。广泛的评估强调了我们的方法在各种场景中的可行性,在相同的样本率和渲染时间内,以可忽略不计的偏差实现方差减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Importance Reweighting for Path Guiding
Contemporary path guiding employs an iterative training scheme to fit radiance distributions. However, existing methods combine the estimates generated in each iteration merely within image space, overlooking differences in the convergence of distribution fitting over individual light paths. This paper formulates the estimation combination task as a path reweighting process. To compute spatio-directional varying combination weights, we propose multiple importance reweighting , leveraging the importance distributions from multiple guiding iterations. We demonstrate that our proposed path-level reweighting makes guiding algorithms less sensitive to noise and overfitting in distributions. This facilitates a finer subdivision of samples both spatially and temporally (i.e., over iterations), which leads to additional improvements in the accuracy of distributions and samples. Inspired by adaptive multiple importance sampling (AMIS), we introduce a simple yet effective mixture-based weighting scheme with theoretically guaranteed consistency, demonstrating good practical performance compared to alternative weighting schemes. To further foster usage with high sample rates, we introduce a hyperparameter that controls the size of sample storage. When this size limit is exceeded, low-valued samples are splatted during rendering and reweighted using a partial mixture of distributions. We found limiting the storage size reduces memory overhead and keeps variance reduction and bias comparable to the unlimited ones. Our method is largely agnostic to the underlying guiding method and compatible with conventional pixel reweighting techniques. Extensive evaluations underscore the feasibility of our approach in various scenes, achieving variance reduction with negligible bias over state-of-the-art solutions within equal sample rates and rendering time.
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来源期刊
ACM Transactions on Graphics
ACM Transactions on Graphics 工程技术-计算机:软件工程
CiteScore
14.30
自引率
25.80%
发文量
193
审稿时长
12 months
期刊介绍: ACM Transactions on Graphics (TOG) is a peer-reviewed scientific journal that aims to disseminate the latest findings of note in the field of computer graphics. It has been published since 1982 by the Association for Computing Machinery. Starting in 2003, all papers accepted for presentation at the annual SIGGRAPH conference are printed in a special summer issue of the journal.
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