Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Deep Reparametrization of Multi-Frame Super-Resolution and Denoising

About

We propose a deep reparametrization of the maximum a posteriori formulation commonly employed in multi-frame image restoration tasks. Our approach is derived by introducing a learned error metric and a latent representation of the target image, which transforms the MAP objective to a deep feature space. The deep reparametrization allows us to directly model the image formation process in the latent space, and to integrate learned image priors into the prediction. Our approach thereby leverages the advantages of deep learning, while also benefiting from the principled multi-frame fusion provided by the classical MAP formulation. We validate our approach through comprehensive experiments on burst denoising and burst super-resolution datasets. Our approach sets a new state-of-the-art for both tasks, demonstrating the generality and effectiveness of the proposed formulation.

Goutam Bhat, Martin Danelljan, Fisher Yu, Luc Van Gool, Radu Timofte• 2021

Related benchmarks

TaskDatasetResultRank
DenoisingSpaces frame 6 (test)
PSNR37.37
48
Burst Super-ResolutionSyntheticBurst (val)
PSNR41.56
18
Burst Super-ResolutionBurstSR (val)
PSNR48.33
16
Multi-Frame Super-ResolutionBurstSR real-world images x4
PSNR48.15
12
Burst Super-ResolutionSynthetic BurstSR (test)
PSNR41.56
12
Burst DenoisingGrayscale burst denoising set (val)
Gain x139.37
10
Burst Denoisingcolor burst denoising set (test)
Gain x142.21
9
Burst DenoisingGrayscale Burst Denoising dataset 39 (test)
Gain (x1)39.37
9
Burst Super-ResolutionSyntheticBurst x4 (test)
PSNR41.56
9
Burst Super-ResolutionBurstSR x4 (test)
PSNR48.33
9
Showing 10 of 21 rows

Other info

Follow for update