The Walt Disney Company
Denoising Monte Carlo renderings using neural networks with asymmetric loss

Last updated:

Abstract:

A modular architecture is provided for denoising Monte Carlo renderings using neural networks. The temporal approach extracts and combines feature representations from neighboring frames rather than building a temporal context using recurrent connections. A multiscale architecture includes separate single-frame or temporal denoising modules for individual scales, and one or more scale compositor neural networks configured to adaptively blend individual scales. An error-predicting module is configured to produce adaptive sampling maps for a renderer to achieve more uniform residual noise distribution. An asymmetric loss function may be used for training the neural networks, which can provide control over the variance-bias trade-off during denoising.

Status:
Grant
Type:

Utility

Filling date:

31 Jul 2018

Issue date:

30 Jun 2020