Affiliation:
1. Tampere University, Tampere, Finland
Abstract
Path tracing produces realistic results including global illumination using a unified simple rendering pipeline. Reducing the amount of noise to imperceptible levels without post-processing requires thousands of
samples per pixel
(spp), while currently it is only possible to render extremely noisy 1 spp frames in real time with desktop GPUs. However, post-processing can utilize feature buffers, which contain noise-free auxiliary data available in the rendering pipeline. Previously, regression-based noise filtering methods have only been used in offline rendering due to their high computational cost. In this article we propose a novel regression-based reconstruction pipeline, called
Blockwise Multi-Order Feature Regression
(BMFR), tailored for path-traced 1 spp inputs that runs in real time. The high speed is achieved with a fast implementation of augmented QR factorization and by using stochastic regularization to address rank-deficient feature data. The proposed algorithm is 1.8× faster than the previous state-of-the-art real-time path-tracing reconstruction method while producing better quality frame sequences.
Funder
TUT Graduate School
Nokia Foundation
Finnish Foundation for Technology Promotion
FiDiPro-StreamPro
Business Finland
ECSEL JU project FitOptiVis
Emil Aaltonen Foundation
Academy of Finland
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Graphics and Computer-Aided Design
Cited by
31 articles.
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