Search Results for author: Max Daniels

Found 5 papers, 2 papers with code

Score-based Generative Neural Networks for Large-Scale Optimal Transport

1 code implementation NeurIPS 2021 Max Daniels, Tyler Maunu, Paul Hand

We consider the fundamental problem of sampling the optimal transport coupling between given source and target distributions.

Generator Surgery for Compressed Sensing

no code implementations22 Feb 2021 Niklas Smedemark-Margulies, Jung Yeon Park, Max Daniels, Rose Yu, Jan-Willem van de Meent, Paul Hand

We introduce a method for achieving low representation error using generators as signal priors.

Reducing the Representation Error of GAN Image Priors Using the Deep Decoder

no code implementations23 Jan 2020 Max Daniels, Paul Hand, Reinhard Heckel

In this paper, we demonstrate a method for reducing the representation error of GAN priors by modeling images as the linear combination of a GAN prior with a Deep Decoder.

Compressive Sensing Image Restoration

Removing the Representation Error of GAN Image Priors Using the Deep Decoder

no code implementations25 Sep 2019 Max Daniels, Reinhard Heckel, Paul Hand

In this paper, we demonstrate a method for removing the representation error of a GAN when used as a prior in inverse problems by modeling images as the linear combination of a GAN with a Deep Decoder.

Compressive Sensing Image Restoration

Invertible generative models for inverse problems: mitigating representation error and dataset bias

1 code implementation28 May 2019 Muhammad Asim, Max Daniels, Oscar Leong, Ali Ahmed, Paul Hand

For compressive sensing, invertible priors can yield higher accuracy than sparsity priors across almost all undersampling ratios, and due to their lack of representation error, invertible priors can yield better reconstructions than GAN priors for images that have rare features of variation within the biased training set, including out-of-distribution natural images.

Compressive Sensing Denoising +1

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