Wavelet-space representations for neural super-resolution in rendering pipelines
We investigate the use of wavelet-space feature decomposition in neural super-resolution for rendering pipelines. Building on recent neural upscaling frameworks, we introduce a formulation that predicts stationary wavelet coefficients rather than directly regressing RGB values. This frequency-aware decomposition separates low- and high-frequency components, enabling sharper texture recovery and reducing blur in challenging regions. Unlike conventional wavelet transforms, our use of the stationary wavelet transform (SWT) preserves spatial alignment across subbands, allowing the network to integrate G-buffer attributes and temporally warped history frames in a shift-invariant manner. The predicted coefficients are recombined through inverse wavelet synthesis, producing resolution-consistent reconstructions across arbitrary scale factors. We conduct extensive evaluations and ablations, showing that incorporating SWT yields superior perceptual quality compared to industry baselines, while maintaining real-time performance on modern hardware. Taken together, our results suggest that wavelet-domain neural super-resolution provides a principled and efficient path toward higher-quality real-time rendering, with broader implications for neural rendering and graphics applications
Principal Investigator
Team (4)
- [email protected]
Prateek Poudel
Researcher
- [email protected]
Prashant Aryal
Researcher
- [email protected]
Kirtan Kunwar
Researcher
- [email protected]
Navin Nepal
Researcher
Type
Basic
Status
Published

