Estimating subsurface properties from geophysical measurements is a common inverse problem. Several Bayesian methods currently aim to find the solution to a geophysical inverse problem and quantify its uncertainty. However, most geophysical applications exhibit more than one plausible solution. Here, we propose a multimodal variational autoencoder model that employs a mixture of truncated Gaussian densities to provide multiple solutions, along with their probability of occurrence and a quantification of their uncertainty. This autoencoder is assembled with an encoder and a decoder, where the first one provides a mixture of truncated Gaussian densities from a neural network, and the second is the numerical solution of the forward problem giv...
The use of the probabilistic approach to solve inverse problems is becoming more popular in the geop...
Providing images of the subsurface from ground-based datasets is at the heart of the geophysicist’s...
Inverse problems are notoriously difficult to solve because they can have no solutions, multiple sol...
Prior information regarding subsurface spatial patterns may be used in geophysical inversion to obta...
My thesis presents several novel methods to facilitate solving large-scale inverse problems by utili...
Estimation of uncertainties is critical for subsequent decision making in all applications of geos...
Understanding the earth model from real-world measurements is critical in geophysical explorations. ...
In geophysical inversion the model parameterisation, the number of unknown the level of smoothing a...
peer reviewedImaging the subsurface of the Earth is of prime concern in geosciences. In this scope, ...
In the existence half of a geophysical inverse problem (finding a model to fit the data), any method...
Geophysics is widely used to model the subsurface due to its combination of low-cost and large spati...
Geophysical inverse problems can be posed as the minimization of an objective function where one ter...
Author Posting. © The Authors, 2019. This article is posted here by permission of The Royal Astronom...
Machine learning methods for solving inverse problems require uncertainty estimation to be reliable ...
We critically examine the performance of sequential geostatistical resampling (SGR) as a model propo...
The use of the probabilistic approach to solve inverse problems is becoming more popular in the geop...
Providing images of the subsurface from ground-based datasets is at the heart of the geophysicist’s...
Inverse problems are notoriously difficult to solve because they can have no solutions, multiple sol...
Prior information regarding subsurface spatial patterns may be used in geophysical inversion to obta...
My thesis presents several novel methods to facilitate solving large-scale inverse problems by utili...
Estimation of uncertainties is critical for subsequent decision making in all applications of geos...
Understanding the earth model from real-world measurements is critical in geophysical explorations. ...
In geophysical inversion the model parameterisation, the number of unknown the level of smoothing a...
peer reviewedImaging the subsurface of the Earth is of prime concern in geosciences. In this scope, ...
In the existence half of a geophysical inverse problem (finding a model to fit the data), any method...
Geophysics is widely used to model the subsurface due to its combination of low-cost and large spati...
Geophysical inverse problems can be posed as the minimization of an objective function where one ter...
Author Posting. © The Authors, 2019. This article is posted here by permission of The Royal Astronom...
Machine learning methods for solving inverse problems require uncertainty estimation to be reliable ...
We critically examine the performance of sequential geostatistical resampling (SGR) as a model propo...
The use of the probabilistic approach to solve inverse problems is becoming more popular in the geop...
Providing images of the subsurface from ground-based datasets is at the heart of the geophysicist’s...
Inverse problems are notoriously difficult to solve because they can have no solutions, multiple sol...