Global probabilistic inversion within the latent space learned by a Generative Adversarial Network (GAN) has been recently demonstrated. Compared to inversion on the original model space, using the latent space of a trained GAN can offer the following benefits: (1) the generated model proposals are geostatistically consistent with the prescribed prior training image (TI), and (2) the parameter space is reduced by orders of magnitude compared to the original model space. Nevertheless, exploring the learned latent space by state-of-the-art Markov chain Monte Carlo (MCMC) methods may still require a large computational effort. As an alternative, parameters in this latent space could possibly be optimized with much less computationally expensiv...
In contrast to deterministic inversion, probabilistic Bayesian inversion provides an ensemble of sol...
In contrast to deterministic inversion, probabilistic Bayesian inversion provides an ensemble of sol...
The advent of fast sensing technologies allows for real-time model updates in many applications wher...
International audienceGlobal probabilistic inversion within the latent space learned by a Generative...
International audienceGlobal probabilistic inversion within the latent space learned by a Generative...
International audienceGlobal probabilistic inversion within the latent space learned by a Generative...
Probabilistic inversion within a multiple‐point statistics framework is often computationally prohib...
Probabilistic inversion within a multiple‐point statistics framework is often computationally prohib...
When solving inverse problems in geophysical imaging, deep generative models (DGMs) may be used to e...
Given the sparsity of geophysical data it is useful to rely on prior information on the expected geo...
Given the sparsity of geophysical data it is useful to rely on prior information on the expected geo...
For highly structured subsurface, the use of strong prior information in geophysical inversion produ...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
In contrast to deterministic inversion, probabilistic Bayesian inversion provides an ensemble of sol...
In contrast to deterministic inversion, probabilistic Bayesian inversion provides an ensemble of sol...
The advent of fast sensing technologies allows for real-time model updates in many applications wher...
International audienceGlobal probabilistic inversion within the latent space learned by a Generative...
International audienceGlobal probabilistic inversion within the latent space learned by a Generative...
International audienceGlobal probabilistic inversion within the latent space learned by a Generative...
Probabilistic inversion within a multiple‐point statistics framework is often computationally prohib...
Probabilistic inversion within a multiple‐point statistics framework is often computationally prohib...
When solving inverse problems in geophysical imaging, deep generative models (DGMs) may be used to e...
Given the sparsity of geophysical data it is useful to rely on prior information on the expected geo...
Given the sparsity of geophysical data it is useful to rely on prior information on the expected geo...
For highly structured subsurface, the use of strong prior information in geophysical inversion produ...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
Efficient and high-fidelity prior sampling and inversion for complex geological media is still a lar...
In contrast to deterministic inversion, probabilistic Bayesian inversion provides an ensemble of sol...
In contrast to deterministic inversion, probabilistic Bayesian inversion provides an ensemble of sol...
The advent of fast sensing technologies allows for real-time model updates in many applications wher...