pith. sign in

Super-resolution with deep convolutional sufficient statistics

2 Pith papers cite this work. Polarity classification is still indexing.

2 Pith papers citing it
abstract

Inverse problems in image and audio, and super-resolution in particular, can be seen as high-dimensional structured prediction problems, where the goal is to characterize the conditional distribution of a high-resolution output given its low-resolution corrupted observation. When the scaling ratio is small, point estimates achieve impressive performance, but soon they suffer from the regression-to-the-mean problem, result of their inability to capture the multi-modality of this conditional distribution. Modeling high-dimensional image and audio distributions is a hard task, requiring both the ability to model complex geometrical structures and textured regions. In this paper, we propose to use as conditional model a Gibbs distribution, where its sufficient statistics are given by deep convolutional neural networks. The features computed by the network are stable to local deformation, and have reduced variance when the input is a stationary texture. These properties imply that the resulting sufficient statistics minimize the uncertainty of the target signals given the degraded observations, while being highly informative. The filters of the CNN are initialized by multiscale complex wavelets, and then we propose an algorithm to fine-tune them by estimating the gradient of the conditional log-likelihood, which bears some similarities with Generative Adversarial Networks. We evaluate experimentally the proposed approach in the image super-resolution task, but the approach is general and could be used in other challenging ill-posed problems such as audio bandwidth extension.

citation-role summary

background 1

citation-polarity summary

fields

cs.CV 1 cs.LG 1

years

2026 1 2016 1

roles

background 1

polarities

background 1

representative citing papers

Density estimation using Real NVP

cs.LG · 2016-05-27 · accept · novelty 8.0

Real NVP uses affine coupling layers to create invertible transformations that support exact density estimation, sampling, and latent inference without approximations.

citing papers explorer

Showing 2 of 2 citing papers.

  • Density estimation using Real NVP cs.LG · 2016-05-27 · accept · none · ref 9

    Real NVP uses affine coupling layers to create invertible transformations that support exact density estimation, sampling, and latent inference without approximations.

  • Chroma Clues: Leveraging Color Statistics to Detect Synthetic Images cs.CV · 2026-06-01 · unverdicted · none · ref 50 · internal anchor

    Color transformations expose statistical discrepancies in synthetic images, supporting a classifier with 93.27% average accuracy and robustness to post-processing.