In many exploration areas, successful separation of primaries and multiples greatly deter-mines the quality of seismic imaging. Despite major advances made by Surface-Related Multiple Elimination (SRME), amplitude errors in the predicted multiples remain a prob-lem. When these errors vary for each type of multiple differently (as a function of offset, time and dip), these amplitude errors pose a serious challenge for conventional least-squares matching and for the recently introduced separation by curvelet-domain thresholding. We propose a data-adaptive method that corrects amplitude errors, which vary smoothly as a function of location, scale (frequency band) and angle. In that case, the amplitudes can be corrected by an element-wise curve...
Current multiple-removal algorithms in seismic processing use either differential moveout or predict...
Running head: Curvelet-based processing In this letter, the solutions to three seismic processing pr...
International audienceAn adaptive multiple subtraction step is necessary for almost all methods that...
In many exploration areas, successful separation of primaries and multiples greatly determines the q...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which mult...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
Surface Related Multiple Elimination (SRME) usually suffers the issue of either over-attenuation tha...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
A recent robust multiple-elimination technique, based on the underlying principle that relates prima...
Migration can accurately locate reflectors in the earth but in most cases fails to correctly resolve...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
International audienceThe suppression of multiples is a crucial task when processing seismic reflect...
International audienceThe suppression of multiples is a crucial task when processing seismic reflect...
In this paper, we present a nonlinear curvelet-based sparsity-promoting formulation for three proble...
Current multiple-removal algorithms in seismic processing use either differential moveout or predict...
Running head: Curvelet-based processing In this letter, the solutions to three seismic processing pr...
International audienceAn adaptive multiple subtraction step is necessary for almost all methods that...
In many exploration areas, successful separation of primaries and multiples greatly determines the q...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which mult...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
Surface Related Multiple Elimination (SRME) usually suffers the issue of either over-attenuation tha...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
A recent robust multiple-elimination technique, based on the underlying principle that relates prima...
Migration can accurately locate reflectors in the earth but in most cases fails to correctly resolve...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
International audienceThe suppression of multiples is a crucial task when processing seismic reflect...
International audienceThe suppression of multiples is a crucial task when processing seismic reflect...
In this paper, we present a nonlinear curvelet-based sparsity-promoting formulation for three proble...
Current multiple-removal algorithms in seismic processing use either differential moveout or predict...
Running head: Curvelet-based processing In this letter, the solutions to three seismic processing pr...
International audienceAn adaptive multiple subtraction step is necessary for almost all methods that...