Conditional Sampling from Invertible Generative Models with Applications to Inverse Problems

02/26/2020
by   Erik M. Lindgren, et al.
10

We consider uncertainty aware compressive sensing when the prior distribution is defined by an invertible generative model. In this problem, we receive a set of low dimensional measurements and we want to generate conditional samples of high dimensional objects conditioned on these measurements. We first show that the conditional sampling problem is hard in general, and thus we consider approximations to the problem. We develop a variational approach to conditional sampling that composes a new generative model with the given generative model. This allows us to utilize the sampling ability of the given generative model to quickly generate samples from the conditional distribution.

READ FULL TEXT

page 10

page 11

page 12

page 13

research
03/15/2022

Generative models and Bayesian inversion using Laplace approximation

The Bayesian approach to solving inverse problems relies on the choice o...
research
06/15/2022

CARD: Classification and Regression Diffusion Models

Learning the distribution of a continuous or categorical response variab...
research
04/12/2021

Boltzmann Tuning of Generative Models

The paper focuses on the a posteriori tuning of a generative model in or...
research
05/15/2022

cMelGAN: An Efficient Conditional Generative Model Based on Mel Spectrograms

Analysing music in the field of machine learning is a very difficult pro...
research
10/04/2019

Conditional out-of-sample generation for unpaired data using trVAE

While generative models have shown great success in generating high-dime...
research
04/23/2021

Sketch-based Normal Map Generation with Geometric Sampling

Normal map is an important and efficient way to represent complex 3D mod...
research
06/18/2020

Set Distribution Networks: a Generative Model for Sets of Images

Images with shared characteristics naturally form sets. For example, in ...

Please sign up or login with your details

Forgot password? Click here to reset