International audienceRandom and structured noise both affect seismic data, hiding the reflections of interest (primaries) that carry meaningful geo-physical interpretation. When the structured noise is composed of multiple reflections, its adaptive cancellation is obtained through time-varying filtering, compensating inaccuracies in given approximate templates. The under-determined problem can then be formulated as a convex optimization one, providing estimates of both filters and primaries. Within this framework, the criterion to be minimized mainly consists of two parts: a data fidelity term and hard constraints model-ing a priori information. This formulation may avoid, or at least facilitate, some parameter determination tasks, usually...
IEEE We present lift and relax for waveform inversion (LRWI), an approach that mitigates the local m...
We propose a method for seismic data interpolation based on 1) the reformulation of the problem as a...
International audienceFull waveform inversion is a PDE-constrained nonlinear least-squares problem d...
International audienceRandom and structured noise both affect seismic data, hiding the reflections o...
Inverse problems in seismic tomography are often cast in the form of an optimization problem involvi...
Seismic reflection tomography is a method for determining a subsurface velocity model from the trave...
In this talk we provide an overview of the history of l1-norm minimization applied to underdetermine...
Inverse problems in the imaging sciences encompass a variety of applications. The primary problem o...
Many experimental techniques in geophysics advance the understanding of Earth processes by estimatin...
Many experimental techniques in geophysics advance the understanding of Earth processes by ...
Geophysical optimisation problems are often non-linear, multi-dimensional, and characterised by obje...
Inverse problems are an important class of problems found in many areas of science and engineering. ...
Despite recent developments in improved acquisition, seismic data often remains undersampled along s...
The vast majority of the Earth system is inaccessible to direct observation. Consequently, the struc...
A non-linear singularity-preserving solution to the least-squares seismic imaging problem with spars...
IEEE We present lift and relax for waveform inversion (LRWI), an approach that mitigates the local m...
We propose a method for seismic data interpolation based on 1) the reformulation of the problem as a...
International audienceFull waveform inversion is a PDE-constrained nonlinear least-squares problem d...
International audienceRandom and structured noise both affect seismic data, hiding the reflections o...
Inverse problems in seismic tomography are often cast in the form of an optimization problem involvi...
Seismic reflection tomography is a method for determining a subsurface velocity model from the trave...
In this talk we provide an overview of the history of l1-norm minimization applied to underdetermine...
Inverse problems in the imaging sciences encompass a variety of applications. The primary problem o...
Many experimental techniques in geophysics advance the understanding of Earth processes by estimatin...
Many experimental techniques in geophysics advance the understanding of Earth processes by ...
Geophysical optimisation problems are often non-linear, multi-dimensional, and characterised by obje...
Inverse problems are an important class of problems found in many areas of science and engineering. ...
Despite recent developments in improved acquisition, seismic data often remains undersampled along s...
The vast majority of the Earth system is inaccessible to direct observation. Consequently, the struc...
A non-linear singularity-preserving solution to the least-squares seismic imaging problem with spars...
IEEE We present lift and relax for waveform inversion (LRWI), an approach that mitigates the local m...
We propose a method for seismic data interpolation based on 1) the reformulation of the problem as a...
International audienceFull waveform inversion is a PDE-constrained nonlinear least-squares problem d...