Deep Compositional Denoising for High-quality Monte Carlo Rendering
We propose a deep-learning method for automatically decomposing noisy Monte Carlo renderings into components that kernel-predicting denoisers can denoise more effectively.
June 29, 2021
Eurographics Symposium on Rendering (EGSR) 2021
Authors
Xianyao Zhang (DisneyResearch|Studios/ETH Joint PhD)
Marco Manzi (DisneyResearch|Studios)
Thijs Vogels (EPFL)
Henrik Dahlberg (Industrial Light & Magic)
Markus Gross ((DisneyResearch|Studios)/ETH Zurich)
Marios Papas (DisneyResearch|Studios)
We propose a deep-learning method for automatically decomposing noisy Monte Carlo renderings into components that kernel-predicting denoisers can denoise more effectively. In our model, a neural decomposition module learns to predict noisy components and corresponding feature maps, which are consecutively reconstructed by a denoising module. The components are predicted based on statistics aggregated at the pixel level by the renderer. Denoising these components individually allows the use of per-component kernels that adapt to each component’s noisy signal characteristics. Experimentally, we show that the proposed decomposition module consistently improves the denoising quality of current state-of-the-art kernel-predicting denoisers on large-scale academic and production datasets.