Predictive multiple suppression methods consist of two main steps: a prediction step, in which multiples are predicted from the seismic data, and a subtraction step, in which the predicted multiples are matched with the true multiples in the data. The last step appears crucial in practice: an incorrect adaptive subtraction method will cause multiples to be sub-optimally subtracted or primaries being distorted, or both. Therefore, we propose a new domain for separation of primaries and multiples via the Curvelet transform. This transform maps the data into almost orthogonal localized events with a directional and spatialtemporal component. The multiples are suppressed by thresholding the input data at those Curvelet components where the pred...
In many exploration areas, successful separation of primaries and multiples greatly deter-mines the ...
In this paper an overview is given on the application of directional basis functions, known under th...
In this paper, we present a nonlinear curvelet-based sparsity-promoting formulation for three proble...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which mult...
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 many exploration areas, successful separation of primaries and multiples greatly determines the q...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
Surface Related Multiple Elimination (SRME) usually suffers the issue of either over-attenuation tha...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
In this abstract, we present a novel primary-multiple separation scheme which makes use of the spars...
A non-linear primary-multiple separation method using curvelets frames is presented. The advantage o...
A non-linear primary-multiple separation method using curvelets frames is presented. The advantage o...
In many exploration areas, successful separation of primaries and multiples greatly deter-mines the ...
In this paper an overview is given on the application of directional basis functions, known under th...
In this paper, we present a nonlinear curvelet-based sparsity-promoting formulation for three proble...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which multi...
Predictive multiple suppression methods consist of two main steps: a prediction step, in which mult...
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 many exploration areas, successful separation of primaries and multiples greatly determines the q...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
Surface Related Multiple Elimination (SRME) usually suffers the issue of either over-attenuation tha...
The process of obtaining high quality seismic images is very challenging when exploring new areas th...
In this abstract, we present a novel primary-multiple separation scheme which makes use of the spars...
A non-linear primary-multiple separation method using curvelets frames is presented. The advantage o...
A non-linear primary-multiple separation method using curvelets frames is presented. The advantage o...
In many exploration areas, successful separation of primaries and multiples greatly deter-mines the ...
In this paper an overview is given on the application of directional basis functions, known under th...
In this paper, we present a nonlinear curvelet-based sparsity-promoting formulation for three proble...